# Downloads 2018

Number of events: 1086

- $\ell_1$-regression with Heavy-tailed Distributions
- 2nd Workshop on Machine Learning on the Phone and other Consumer Devices (MLPCD 2)
- 3D-Aware Scene Manipulation via Inverse Graphics
- 3D Steerable CNNs: Learning Rotationally Equivariant Features in Volumetric Data
- A^2-Nets: Double Attention Networks
- A Bandit Approach to Sequential Experimental Design with False Discovery Control
- A Bayesian Approach to Generative Adversarial Imitation Learning
- A Bayesian Nonparametric View on Count-Min Sketch
- A Bayes-Sard Cubature Method
- A Block Coordinate Ascent Algorithm for Mean-Variance Optimization
- A Bridging Framework for Model Optimization and Deep Propagation
- Accelerated Stochastic Matrix Inversion: General Theory and Speeding up BFGS Rules for Faster Second-Order Optimization
- Acceleration through Optimistic No-Regret Dynamics
- Accountability and Algorithmic Bias: Why Diversity and Inclusion Matters
- A Convex Duality Framework for GANs
- A convex program for bilinear inversion of sparse vectors
- A Cooperative Visually Grounded Dialogue Game with a Humanoid Robot
- Active Learning for Non-Parametric Regression Using Purely Random Trees
- Active Matting
- Actor-Critic Policy Optimization in Partially Observable Multiagent Environments
- Adaptation to Easy Data in Prediction with Limited Advice
- Adapted Deep Embeddings: A Synthesis of Methods for k-Shot Inductive Transfer Learning
- Adaptive Learning with Unknown Information Flows
- Adaptive Methods for Nonconvex Optimization
- Adaptive Negative Curvature Descent with Applications in Non-convex Optimization
- Adaptive Online Learning in Dynamic Environments
- Adaptive Path-Integral Autoencoders: Representation Learning and Planning for Dynamical Systems
- Adaptive Sampling Towards Fast Graph Representation Learning
- Adaptive Skip Intervals: Temporal Abstraction for Recurrent Dynamical Models
- Adding One Neuron Can Eliminate All Bad Local Minima
- A Deep Bayesian Policy Reuse Approach Against Non-Stationary Agents
- A Dual Framework for Low-rank Tensor Completion
- Adversarial Attacks on Stochastic Bandits
- Adversarial Examples that Fool both Computer Vision and Time-Limited Humans
- Adversarially Robust Generalization Requires More Data
- Adversarially Robust Optimization with Gaussian Processes
- Adversarial Multiple Source Domain Adaptation
- Adversarial Regularizers in Inverse Problems
- Adversarial Risk and Robustness: General Definitions and Implications for the Uniform Distribution
- Adversarial Robustness: Theory and Practice
- Adversarial Scene Editing: Automatic Object Removal from Weak Supervision
- Adversarial Text Generation via Feature-Mover's Distance
- Adversarial vulnerability for any classifier
- A flexible model for training action localization with varying levels of supervision
- A Game-Theoretic Approach to Recommendation Systems with Strategic Content Providers
- A General Method for Amortizing Variational Filtering
- A Hands-free Natural User Interface (NUI) for AR/VR Head-Mounted Displays Exploiting Wearer’s Facial Gestures
- AI for social good
- Algebraic tests of general Gaussian latent tree models
- Algorithmic Assurance: An Active Approach to Algorithmic Testing using Bayesian Optimisation
- Algorithmic Linearly Constrained Gaussian Processes
- Algorithmic Regularization in Learning Deep Homogeneous Models: Layers are Automatically Balanced
- Algorithms and Theory for Multiple-Source Adaptation
- A Likelihood-Free Inference Framework for Population Genetic Data using Exchangeable Neural Networks
- A Linear Speedup Analysis of Distributed Deep Learning with Sparse and Quantized Communication
- All of Bayesian Nonparametrics (Especially the Useful Bits)
- Almost Optimal Algorithms for Linear Stochastic Bandits with Heavy-Tailed Payoffs
- A loss framework for calibrated anomaly detection
- Alternating optimization of decision trees, with application to learning sparse oblique trees
- A Lyapunov-based Approach to Safe Reinforcement Learning
- A machine learning environment to determine novel malaria policies
- A Mathematical Model For Optimal Decisions In A Representative Democracy
- A model-agnostic web interface for interactive music composition by inpainting
- A Model for Learned Bloom Filters and Optimizing by Sandwiching
- Amortized Inference Regularization
- Analysis of Krylov Subspace Solutions of Regularized Non-Convex Quadratic Problems
- Analytic solution and stationary phase approximation for the Bayesian lasso and elastic net
- An Efficient Pruning Algorithm for Robust Isotonic Regression
- A Neural Compositional Paradigm for Image Captioning
- An Improved Analysis of Alternating Minimization for Structured Multi-Response Regression
- An Information-Theoretic Analysis for Thompson Sampling with Many Actions
- An intriguing failing of convolutional neural networks and the CoordConv solution
- An Off-policy Policy Gradient Theorem Using Emphatic Weightings
- A no-regret generalization of hierarchical softmax to extreme multi-label classification
- Answerer in Questioner's Mind: Information Theoretic Approach to Goal-Oriented Visual Dialog
- Approximate Knowledge Compilation by Online Collapsed Importance Sampling
- Approximating Real-Time Recurrent Learning with Random Kronecker Factors
- Approximation algorithms for stochastic clustering
- A Practical Algorithm for Distributed Clustering and Outlier Detection
- A probabilistic population code based on neural samples
- A Probabilistic U-Net for Segmentation of Ambiguous Images
- A Reduction for Efficient LDA Topic Reconstruction
- Are GANs Created Equal? A Large-Scale Study
- Are ResNets Provably Better than Linear Predictors?
- A Retrieve-and-Edit Framework for Predicting Structured Outputs
- A Simple Cache Model for Image Recognition
- A Simple Proximal Stochastic Gradient Method for Nonsmooth Nonconvex Optimization
- A Simple Unified Framework for Detecting Out-of-Distribution Samples and Adversarial Attacks
- A Smoothed Analysis of the Greedy Algorithm for the Linear Contextual Bandit Problem
- A Smoother Way to Train Structured Prediction Models
- A Spectral View of Adversarially Robust Features
- Assessing Generative Models via Precision and Recall
- Assessing the Scalability of Biologically-Motivated Deep Learning Algorithms and Architectures
- A Statistical Recurrent Model on the Manifold of Symmetric Positive Definite Matrices
- A Stein variational Newton method
- A Structured Prediction Approach for Label Ranking
- Asymptotic optimality of adaptive importance sampling
- A Theory-Based Evaluation of Nearest Neighbor Models Put Into Practice
- A theory on the absence of spurious solutions for nonconvex and nonsmooth optimization
- ATOMO: Communication-efficient Learning via Atomic Sparsification
- Attacks Meet Interpretability: Attribute-steered Detection of Adversarial Samples
- Attention in Convolutional LSTM for Gesture Recognition
- A Unified Feature Disentangler for Multi-Domain Image Translation and Manipulation
- A Unified Framework for Extensive-Form Game Abstraction with Bounds
- A Unified View of Piecewise Linear Neural Network Verification
- Autoconj: Recognizing and Exploiting Conjugacy Without a Domain-Specific Language
- Automatic Curriculum Generation Applied to Teaching Novices a Short Bach Piano Segment
- Automatic differentiation in ML: Where we are and where we should be going
- Automatic Machine Learning
- Automatic Program Synthesis of Long Programs with a Learned Garbage Collector
- Automating Bayesian optimization with Bayesian optimization
- Autonomous robotic manipulation with a desktop research platform
- Backpropagation with Callbacks: Foundations for Efficient and Expressive Differentiable Programming
- Balanced Policy Evaluation and Learning
- Banach Wasserstein GAN
- Bandit Learning in Concave N-Person Games
- Bandit Learning with Implicit Feedback
- Bandit Learning with Positive Externalities
- Batch-Instance Normalization for Adaptively Style-Invariant Neural Networks
- Bayesian Adversarial Learning
- Bayesian Alignments of Warped Multi-Output Gaussian Processes
- Bayesian Control of Large MDPs with Unknown Dynamics in Data-Poor Environments
- Bayesian Deep Learning
- Bayesian Distributed Stochastic Gradient Descent
- Bayesian Inference of Temporal Task Specifications from Demonstrations
- Bayesian Model-Agnostic Meta-Learning
- Bayesian Model Selection Approach to Boundary Detection with Non-Local Priors
- Bayesian multi-domain learning for cancer subtype discovery from next-generation sequencing count data
- Bayesian Nonparametric Spectral Estimation
- Bayesian Pose Graph Optimization via Bingham Distributions and Tempered Geodesic MCMC
- Bayesian Semi-supervised Learning with Graph Gaussian Processes
- Bayesian Structure Learning by Recursive Bootstrap
- Beauty-in-averageness and its contextual modulations: A Bayesian statistical account
- Benefits of over-parameterization with EM
- Beyond Grids: Learning Graph Representations for Visual Recognition
- Beyond Log-concavity: Provable Guarantees for Sampling Multi-modal Distributions using Simulated Tempering Langevin Monte Carlo
- Bias and Generalization in Deep Generative Models: An Empirical Study
- BigBlueBot: A Demonstration of How to Detect Egregious Conversations with Chatbots
- Bilevel Distance Metric Learning for Robust Image Recognition
- Bilevel learning of the Group Lasso structure
- Bilinear Attention Networks
- Binary Classification from Positive-Confidence Data
- Binary Rating Estimation with Graph Side Information
- BinGAN: Learning Compact Binary Descriptors with a Regularized GAN
- Bipartite Stochastic Block Models with Tiny Clusters
- Blind Deconvolutional Phase Retrieval via Convex Programming
- Blockwise Parallel Decoding for Deep Autoregressive Models
- BML: A High-performance, Low-cost Gradient Synchronization Algorithm for DML Training
- Boolean Decision Rules via Column Generation
- Boosted Sparse and Low-Rank Tensor Regression
- Boosting Black Box Variational Inference
- Bounded-Loss Private Prediction Markets
- BourGAN: Generative Networks with Metric Embeddings
- Breaking the Activation Function Bottleneck through Adaptive Parameterization
- Breaking the Curse of Horizon: Infinite-Horizon Off-Policy Estimation
- Breaking the Span Assumption Yields Fast Finite-Sum Minimization
- BRITS: Bidirectional Recurrent Imputation for Time Series
- BRUNO: A Deep Recurrent Model for Exchangeable Data
- But How Does It Work in Theory? Linear SVM with Random Features
- Byzantine Stochastic Gradient Descent
- Can We Gain More from Orthogonality Regularizations in Training Deep Networks?
- CapProNet: Deep Feature Learning via Orthogonal Projections onto Capsule Subspaces
- CatBoost: unbiased boosting with categorical features
- Causal Discovery from Discrete Data using Hidden Compact Representation
- Causal Inference and Mechanism Clustering of A Mixture of Additive Noise Models
- Causal Inference via Kernel Deviance Measures
- Causal Inference with Noisy and Missing Covariates via Matrix Factorization
- Causal Learning
- Chaining Mutual Information and Tightening Generalization Bounds
- Chain of Reasoning for Visual Question Answering
- Challenges and Opportunities for AI in Financial Services: the Impact of Fairness, Explainability, Accuracy, and Privacy
- ChannelNets: Compact and Efficient Convolutional Neural Networks via Channel-Wise Convolutions
- CiML 2018 - Machine Learning competitions "in the wild": Playing in the real world or in real time
- Clebsch–Gordan Nets: a Fully Fourier Space Spherical Convolutional Neural Network
- Clustering Redemption–Beyond the Impossibility of Kleinberg’s Axioms
- Cluster Variational Approximations for Structure Learning of Continuous-Time Bayesian Networks from Incomplete Data
- COLA: Decentralized Linear Learning
- Collaborative Learning for Deep Neural Networks
- Combinatorial Optimization with Graph Convolutional Networks and Guided Tree Search
- Common Pitfalls for Studying the Human Side of Machine Learning
- Communication Compression for Decentralized Training
- Communication Efficient Parallel Algorithms for Optimization on Manifolds
- Community Exploration: From Offline Optimization to Online Learning
- Compact Generalized Non-local Network
- Compact Representation of Uncertainty in Clustering
- Completing State Representations using Spectral Learning
- Complex Gated Recurrent Neural Networks
- Computationally and statistically efficient learning of causal Bayes nets using path queries
- Computing Higher Order Derivatives of Matrix and Tensor Expressions
- Computing Kantorovich-Wasserstein Distances on $d$-dimensional histograms using $(d+1)$-partite graphs
- Conditional Adversarial Domain Adaptation
- Confounding-Robust Policy Improvement
- Connecting Optimization and Regularization Paths
- Connectionist Temporal Classification with Maximum Entropy Regularization
- Constant Regret, Generalized Mixability, and Mirror Descent
- Constrained Cross-Entropy Method for Safe Reinforcement Learning
- Constrained Generation of Semantically Valid Graphs via Regularizing Variational Autoencoders
- Constrained Graph Variational Autoencoders for Molecule Design
- Constructing Deep Neural Networks by Bayesian Network Structure Learning
- Constructing Fast Network through Deconstruction of Convolution
- Constructing Unrestricted Adversarial Examples with Generative Models
- Contamination Attacks and Mitigation in Multi-Party Machine Learning
- Content preserving text generation with attribute controls
- Context-aware Synthesis and Placement of Object Instances
- Context-dependent upper-confidence bounds for directed exploration
- Contextual bandits with surrogate losses: Margin bounds and efficient algorithms
- Contextual Combinatorial Multi-armed Bandits with Volatile Arms and Submodular Reward
- Contextual Pricing for Lipschitz Buyers
- Contextual Stochastic Block Models
- Continual Learning
- Continuous-time Value Function Approximation in Reproducing Kernel Hilbert Spaces
- Contour location via entropy reduction leveraging multiple information sources
- Contrastive Learning from Pairwise Measurements
- Convergence of Cubic Regularization for Nonconvex Optimization under KL Property
- Convex Elicitation of Continuous Properties
- Cooperative Holistic Scene Understanding: Unifying 3D Object, Layout, and Camera Pose Estimation
- Cooperative Learning of Audio and Video Models from Self-Supervised Synchronization
- Cooperative neural networks (CoNN): Exploiting prior independence structure for improved classification
- Coordinate Descent with Bandit Sampling
- Co-regularized Alignment for Unsupervised Domain Adaptation
- Co-teaching: Robust training of deep neural networks with extremely noisy labels
- Counterfactual Inference
- Coupled Variational Bayes via Optimization Embedding
- cpSGD: Communication-efficient and differentially-private distributed SGD
- Credit Assignment For Collective Multiagent RL With Global Rewards
- Critical initialisation for deep signal propagation in noisy rectifier neural networks
- Critiquing and Correcting Trends in Machine Learning
- DAGs with NO TEARS: Continuous Optimization for Structure Learning
- Data Amplification: A Unified and Competitive Approach to Property Estimation
- Data center cooling using model-predictive control
- Data-dependent PAC-Bayes priors via differential privacy
- Data-Driven Clustering via Parameterized Lloyd's Families
- Data-Efficient Hierarchical Reinforcement Learning
- Decentralize and Randomize: Faster Algorithm for Wasserstein Barycenters
- Deep Anomaly Detection Using Geometric Transformations
- Deep Attentive Tracking via Reciprocative Learning
- Deepcode: Feedback Codes via Deep Learning
- Deep, complex, invertible networks for inversion of transmission effects in multimode optical fibres
- Deep Defense: Training DNNs with Improved Adversarial Robustness
- Deep Dynamical Modeling and Control of Unsteady Fluid Flows
- DeepExposure: Learning to Expose Photos with Asynchronously Reinforced Adversarial Learning
- Deep Functional Dictionaries: Learning Consistent Semantic Structures on 3D Models from Functions
- Deep Generative Markov State Models
- Deep Generative Models for Distribution-Preserving Lossy Compression
- Deep Generative Models with Learnable Knowledge Constraints
- Deep Homogeneous Mixture Models: Representation, Separation, and Approximation
- Deep learning to improve quality control in pharmaceutical manufacturing
- Deep Network for the Integrated 3D Sensing of Multiple People in Natural Images
- Deep Neural Nets with Interpolating Function as Output Activation
- Deep Neural Networks Running Onboard Anki’s Robot, Vector
- Deep Neural Networks with Box Convolutions
- Deep Non-Blind Deconvolution via Generalized Low-Rank Approximation
- DeepPINK: reproducible feature selection in deep neural networks
- Deep Poisson gamma dynamical systems
- Deep Predictive Coding Network with Local Recurrent Processing for Object Recognition
- DeepProbLog: Neural Probabilistic Logic Programming
- Deep Reinforcement Learning
- Deep Reinforcement Learning for Online Order Dispatching and Driver Repositioning in Ride-sharing
- Deep Reinforcement Learning in a Handful of Trials using Probabilistic Dynamics Models
- Deep Reinforcement Learning of Marked Temporal Point Processes
- Deep State Space Models for Time Series Forecasting
- Deep State Space Models for Unconditional Word Generation
- Deep Structured Prediction with Nonlinear Output Transformations
- Delta-encoder: an effective sample synthesis method for few-shot object recognition
- Demystifying excessively volatile human learning: A Bayesian persistent prior and a neural approximation
- Dendritic cortical microcircuits approximate the backpropagation algorithm
- Densely Connected Attention Propagation for Reading Comprehension
- Depth-Limited Solving for Imperfect-Information Games
- Derivative Estimation in Random Design
- Designing by Training: Acceleration Neural Network for Fast High-Dimensional Convolution
- Designing Computer Systems for Software 2.0
- Dialog-based Interactive Image Retrieval
- Dialog-to-Action: Conversational Question Answering Over a Large-Scale Knowledge Base
- Differentiable MPC for End-to-end Planning and Control
- Differentially Private Bayesian Inference for Exponential Families
- Differentially Private Change-Point Detection
- Differentially Private Contextual Linear Bandits
- Differentially Private k-Means with Constant Multiplicative Error
- Differentially Private Robust Low-Rank Approximation
- Differentially Private Testing of Identity and Closeness of Discrete Distributions
- Differentially Private Uniformly Most Powerful Tests for Binomial Data
- Differential Privacy for Growing Databases
- Differential Properties of Sinkhorn Approximation for Learning with Wasserstein Distance
- Diffusion Maps for Textual Network Embedding
- DifNet: Semantic Segmentation by Diffusion Networks
- Dimensionality Reduction for Stationary Time Series via Stochastic Nonconvex Optimization
- Dimensionality Reduction has Quantifiable Imperfections: Two Geometric Bounds
- Dimensionally Tight Bounds for Second-Order Hamiltonian Monte Carlo
- Diminishing Returns Shape Constraints for Interpretability and Regularization
- Direct Estimation of Differences in Causal Graphs
- Direct Runge-Kutta Discretization Achieves Acceleration
- Dirichlet-based Gaussian Processes for Large-scale Calibrated Classification
- Dirichlet belief networks for topic structure learning
- Disconnected Manifold Learning for Generative Adversarial Networks
- Discovery of Latent 3D Keypoints via End-to-end Geometric Reasoning
- Discretely Relaxing Continuous Variables for tractable Variational Inference
- Discrimination-aware Channel Pruning for Deep Neural Networks
- Distilled Wasserstein Learning for Word Embedding and Topic Modeling
- Distributed $k$-Clustering for Data with Heavy Noise
- Distributed Learning without Distress: Privacy-Preserving Empirical Risk Minimization
- Distributed Multi-Player Bandits - a Game of Thrones Approach
- Distributed Multitask Reinforcement Learning with Quadratic Convergence
- Distributed Stochastic Optimization via Adaptive SGD
- Distributed Weight Consolidation: A Brain Segmentation Case Study
- Distributionally Robust Graphical Models
- Diverse Ensemble Evolution: Curriculum Data-Model Marriage
- Diversity-Driven Exploration Strategy for Deep Reinforcement Learning
- Does mitigating ML's impact disparity require treatment disparity?
- Do Less, Get More: Streaming Submodular Maximization with Subsampling
- Domain Adaptation by Using Causal Inference to Predict Invariant Conditional Distributions
- Domain-Invariant Projection Learning for Zero-Shot Recognition
- Doubly Robust Bayesian Inference for Non-Stationary Streaming Data with $\beta$-Divergences
- DropBlock: A regularization method for convolutional networks
- DropMax: Adaptive Variational Softmax
- Dropping Symmetry for Fast Symmetric Nonnegative Matrix Factorization
- Dual Policy Iteration
- Dual Principal Component Pursuit: Improved Analysis and Efficient Algorithms
- Dual Swap Disentangling
- DVAE#: Discrete Variational Autoencoders with Relaxed Boltzmann Priors
- Dynamic Network Model from Partial Observations
- Early Stopping for Nonparametric Testing
- Efficient Algorithms for Non-convex Isotonic Regression through Submodular Optimization
- Efficient Anomaly Detection via Matrix Sketching
- Efficient Convex Completion of Coupled Tensors using Coupled Nuclear Norms
- Efficient Formal Safety Analysis of Neural Networks
- Efficient Gradient Computation for Structured Output Learning with Rational and Tropical Losses
- Efficient High Dimensional Bayesian Optimization with Additivity and Quadrature Fourier Features
- Efficient inference for time-varying behavior during learning
- Efficient Loss-Based Decoding on Graphs for Extreme Classification
- Efficient Neural Network Robustness Certification with General Activation Functions
- Efficient nonmyopic batch active search
- Efficient online algorithms for fast-rate regret bounds under sparsity
- Efficient Online Portfolio with Logarithmic Regret
- Efficient Projection onto the Perfect Phylogeny Model
- Efficient Stochastic Gradient Hard Thresholding
- Embedding Logical Queries on Knowledge Graphs
- Emergent Communication Workshop
- Empirical Risk Minimization in Non-interactive Local Differential Privacy Revisited
- Empirical Risk Minimization Under Fairness Constraints
- End-to-End Differentiable Physics for Learning and Control
- End-to-end Symmetry Preserving Inter-atomic Potential Energy Model for Finite and Extended Systems
- Enhancing the Accuracy and Fairness of Human Decision Making
- Entropy and mutual information in models of deep neural networks
- Entropy Rate Estimation for Markov Chains with Large State Space
- Equality of Opportunity in Classification: A Causal Approach
- Escaping Saddle Points in Constrained Optimization
- e-SNLI: Natural Language Inference with Natural Language Explanations
- Estimating Learnability in the Sublinear Data Regime
- Estimators for Multivariate Information Measures in General Probability Spaces
- Evidential Deep Learning to Quantify Classification Uncertainty
- Evolutionary Stochastic Gradient Descent for Optimization of Deep Neural Networks
- Evolution-Guided Policy Gradient in Reinforcement Learning
- Evolved Policy Gradients
- Exact natural gradient in deep linear networks and its application to the nonlinear case
- Ex ante coordination and collusion in zero-sum multi-player extensive-form games
- Expanding Holographic Embeddings for Knowledge Completion
- Experimental Design for Cost-Aware Learning of Causal Graphs
- Explaining Deep Learning Models -- A Bayesian Non-parametric Approach
- Explanations based on the Missing: Towards Contrastive Explanations with Pertinent Negatives
- Exploiting Numerical Sparsity for Efficient Learning : Faster Eigenvector Computation and Regression
- Exploration in Structured Reinforcement Learning
- Exponentially Weighted Imitation Learning for Batched Historical Data
- Exponentiated Strongly Rayleigh Distributions
- Extracting Relationships by Multi-Domain Matching
- Factored Bandits
- Fairness Behind a Veil of Ignorance: A Welfare Analysis for Automated Decision Making
- Fairness Through Computationally-Bounded Awareness
- Faithful Inversion of Generative Models for Effective Amortized Inference
- Fast and Effective Robustness Certification
- Fast Approximate Natural Gradient Descent in a Kronecker Factored Eigenbasis
- Fast deep reinforcement learning using online adjustments from the past
- Faster Neural Networks Straight from JPEG
- Faster Online Learning of Optimal Threshold for Consistent F-measure Optimization
- Fast Estimation of Causal Interactions using Wold Processes
- Fast greedy algorithms for dictionary selection with generalized sparsity constraints
- Fast Greedy MAP Inference for Determinantal Point Process to Improve Recommendation Diversity
- FastGRNN: A Fast, Accurate, Stable and Tiny Kilobyte Sized Gated Recurrent Neural Network
- Fast Rates of ERM and Stochastic Approximation: Adaptive to Error Bound Conditions
- Fast Similarity Search via Optimal Sparse Lifting
- FD-GAN: Pose-guided Feature Distilling GAN for Robust Person Re-identification
- Fighting Boredom in Recommender Systems with Linear Reinforcement Learning
- First-order Stochastic Algorithms for Escaping From Saddle Points in Almost Linear Time
- FishNet: A Versatile Backbone for Image, Region, and Pixel Level Prediction
- Flexible and accurate inference and learning for deep generative models
- Flexible neural representation for physics prediction
- Forecasting Treatment Responses Over Time Using Recurrent Marginal Structural Networks
- Foreground Clustering for Joint Segmentation and Localization in Videos and Images
- Forward Modeling for Partial Observation Strategy Games - A StarCraft Defogger
- Found Graph Data and Planted Vertex Covers
- FRAGE: Frequency-Agnostic Word Representation
- Frequency-Domain Dynamic Pruning for Convolutional Neural Networks
- From Stochastic Planning to Marginal MAP
- Fully Neural Network Based Speech Recognition on Mobile and Embedded Devices
- Fully Understanding The Hashing Trick
- Game for Detecting Backdoor Attacks on Deep Neural Networks using Activation Clustering
- Gamma-Poisson Dynamic Matrix Factorization Embedded with Metadata Influence
- Gather-Excite: Exploiting Feature Context in Convolutional Neural Networks
- Gaussian Process Conditional Density Estimation
- Gaussian Process Prior Variational Autoencoders
- Generalisation in humans and deep neural networks
- Generalisation of structural knowledge in the hippocampal-entorhinal system
- Generalization Bounds for Uniformly Stable Algorithms
- Generalized Cross Entropy Loss for Training Deep Neural Networks with Noisy Labels
- Generalized Inverse Optimization through Online Learning
- Generalized Zero-Shot Learning with Deep Calibration Network
- Generalizing Graph Matching beyond Quadratic Assignment Model
- Generalizing Point Embeddings using the Wasserstein Space of Elliptical Distributions
- Generalizing to Unseen Domains via Adversarial Data Augmentation
- Generalizing Tree Probability Estimation via Bayesian Networks
- Generating Informative and Diverse Conversational Responses via Adversarial Information Maximization
- Generative modeling for protein structures
- Generative Neural Machine Translation
- Generative Probabilistic Novelty Detection with Adversarial Autoencoders
- Genetic-Gated Networks for Deep Reinforcement Learning
- Gen-Oja: Simple & Efficient Algorithm for Streaming Generalized Eigenvector Computation
- Geometrically Coupled Monte Carlo Sampling
- Geometry-Aware Recurrent Neural Networks for Active Visual Recognition
- Geometry Based Data Generation
- GIANT: Globally Improved Approximate Newton Method for Distributed Optimization
- GILBO: One Metric to Measure Them All
- Global Convergence of Langevin Dynamics Based Algorithms for Nonconvex Optimization
- Global Gated Mixture of Second-order Pooling for Improving Deep Convolutional Neural Networks
- Global Geometry of Multichannel Sparse Blind Deconvolution on the Sphere
- Global Non-convex Optimization with Discretized Diffusions
- GLoMo: Unsupervised Learning of Transferable Relational Graphs
- Glow: Generative Flow with Invertible 1x1 Convolutions
- GPyTorch: Blackbox Matrix-Matrix Gaussian Process Inference with GPU Acceleration
- Gradient Descent for Spiking Neural Networks
- Gradient Descent Meets Shift-and-Invert Preconditioning for Eigenvector Computation
- Gradient Sparsification for Communication-Efficient Distributed Optimization
- GradiVeQ: Vector Quantization for Bandwidth-Efficient Gradient Aggregation in Distributed CNN Training
- Graph Convolutional Policy Network for Goal-Directed Molecular Graph Generation
- Graphical Generative Adversarial Networks
- Graphical model inference: Sequential Monte Carlo meets deterministic approximations
- Graph Oracle Models, Lower Bounds, and Gaps for Parallel Stochastic Optimization
- Greedy Hash: Towards Fast Optimization for Accurate Hash Coding in CNN
- Group Equivariant Capsule Networks
- GroupReduce: Block-Wise Low-Rank Approximation for Neural Language Model Shrinking
- GumBolt: Extending Gumbel trick to Boltzmann priors
- Hamiltonian Variational Auto-Encoder
- Hardware Conditioned Policies for Multi-Robot Transfer Learning
- Hessian-based Analysis of Large Batch Training and Robustness to Adversaries
- Heterogeneous Bitwidth Binarization in Convolutional Neural Networks
- Heterogeneous Multi-output Gaussian Process Prediction
- Hierarchical Graph Representation Learning with Differentiable Pooling
- Hierarchical Reinforcement Learning for Zero-shot Generalization with Subtask Dependencies
- High Dimensional Linear Regression using Lattice Basis Reduction
- HitNet: Hybrid Ternary Recurrent Neural Network
- HOGWILD!-Gibbs can be PanAccurate
- Horizon-Independent Minimax Linear Regression
- HOUDINI: Lifelong Learning as Program Synthesis
- How Does Batch Normalization Help Optimization?
- How Many Samples are Needed to Estimate a Convolutional Neural Network?
- How Much Restricted Isometry is Needed In Nonconvex Matrix Recovery?
- How SGD Selects the Global Minima in Over-parameterized Learning: A Dynamical Stability Perspective
- How To Make the Gradients Small Stochastically: Even Faster Convex and Nonconvex SGD
- How to Start Training: The Effect of Initialization and Architecture
- How to tell when a clustering is (approximately) correct using convex relaxations
- Human-in-the-Loop Interpretability Prior
- Hunting for Discriminatory Proxies in Linear Regression Models
- Hybrid Knowledge Routed Modules for Large-scale Object Detection
- Hybrid Macro/Micro Level Backpropagation for Training Deep Spiking Neural Networks
- Hybrid-MST: A Hybrid Active Sampling Strategy for Pairwise Preference Aggregation
- Hybrid Retrieval-Generation Reinforced Agent for Medical Image Report Generation
- Hyperbolic Neural Networks
- Identification and Estimation of Causal Effects from Dependent Data
- Image Inpainting via Generative Multi-column Convolutional Neural Networks
- Image-to-image translation for cross-domain disentanglement
- Imitation Learning and its Challenges in Robotics
- Implicit Bias of Gradient Descent on Linear Convolutional Networks
- Implicit Probabilistic Integrators for ODEs
- Implicit Reparameterization Gradients
- Importance Weighting and Variational Inference
- Improved Algorithms for Collaborative PAC Learning
- Improved Expressivity Through Dendritic Neural Networks
- Improved Network Robustness with Adversary Critic
- Improving Explorability in Variational Inference with Annealed Variational Objectives
- Improving Exploration in Evolution Strategies for Deep Reinforcement Learning via a Population of Novelty-Seeking Agents
- Improving Neural Program Synthesis with Inferred Execution Traces
- Improving Online Algorithms via ML Predictions
- Improving Simple Models with Confidence Profiles
- Incorporating Context into Language Encoding Models for fMRI
- Inequity aversion improves cooperation in intertemporal social dilemmas
- Inexact trust-region algorithms on Riemannian manifolds
- Inference Aided Reinforcement Learning for Incentive Mechanism Design in Crowdsourcing
- Inference in Deep Gaussian Processes using Stochastic Gradient Hamiltonian Monte Carlo
- Inferring Latent Velocities from Weather Radar Data using Gaussian Processes
- Inferring Networks From Random Walk-Based Node Similarities
- Infer to Control: Probabilistic Reinforcement Learning and Structured Control
- Infinite-Horizon Gaussian Processes
- Information-based Adaptive Stimulus Selection to Optimize Communication Efficiency in Brain-Computer Interfaces
- Information Constraints on Auto-Encoding Variational Bayes
- Information-theoretic Limits for Community Detection in Network Models
- Informative Features for Model Comparison
- Insights on representational similarity in neural networks with canonical correlation
- Integrated accounts of behavioral and neuroimaging data using flexible recurrent neural network models
- Integration of Deep Learning Theories
- Interactive Structure Learning with Structural Query-by-Committee
- Interpretability and Robustness in Audio, Speech, and Language
- Interpreting Neural Network Judgments via Minimal, Stable, and Symbolic Corrections
- IntroVAE: Introspective Variational Autoencoders for Photographic Image Synthesis
- Invariant Representations without Adversarial Training
- Invertibility of Convolutional Generative Networks from Partial Measurements
- Investigations into the Human-AI Trust Phenomenon
- Isolating Sources of Disentanglement in Variational Autoencoders
- Is Q-Learning Provably Efficient?
- Iterative Value-Aware Model Learning
- Joint Active Feature Acquisition and Classification with Variable-Size Set Encoding
- Joint Autoregressive and Hierarchical Priors for Learned Image Compression
- Joint Sub-bands Learning with Clique Structures for Wavelet Domain Super-Resolution
- Kalman Normalization: Normalizing Internal Representations Across Network Layers
- KDGAN: Knowledge Distillation with Generative Adversarial Networks
- Knowledge Distillation by On-the-Fly Native Ensemble
- KONG: Kernels for ordered-neighborhood graphs
- L4: Practical loss-based stepsize adaptation for deep learning
- LAG: Lazily Aggregated Gradient for Communication-Efficient Distributed Learning
- Large Margin Deep Networks for Classification
- Large Scale computation of Means and Clusters for Persistence Diagrams using Optimal Transport
- Large-Scale Stochastic Sampling from the Probability Simplex
- Latent Alignment and Variational Attention
- Latent Gaussian Activity Propagation: Using Smoothness and Structure to Separate and Localize Sounds in Large Noisy Environments
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- Learning Abstract Options
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- Learning a latent manifold of odor representations from neural responses in piriform cortex
- Learning and Inference in Hilbert Space with Quantum Graphical Models
- Learning and Testing Causal Models with Interventions
- Learning Attentional Communication for Multi-Agent Cooperation
- Learning Attractor Dynamics for Generative Memory
- Learning a Warping Distance from Unlabeled Time Series Using Sequence Autoencoders
- Learning Beam Search Policies via Imitation Learning
- Learning Bounds for Greedy Approximation with Explicit Feature Maps from Multiple Kernels
- Learning by Instruction
- Learning Compressed Transforms with Low Displacement Rank
- Learning Concave Conditional Likelihood Models for Improved Analysis of Tandem Mass Spectra
- Learning Conditioned Graph Structures for Interpretable Visual Question Answering
- Learning Confidence Sets using Support Vector Machines
- Learning convex bounds for linear quadratic control policy synthesis
- Learning convex polytopes with margin
- Learning Deep Disentangled Embeddings With the F-Statistic Loss
- Learning Disentangled Joint Continuous and Discrete Representations
- Learning filter widths of spectral decompositions with wavelets
- Learning from discriminative feature feedback
- Learning from Group Comparisons: Exploiting Higher Order Interactions
- Learning Gaussian Processes by Minimizing PAC-Bayesian Generalization Bounds
- Learning Hierarchical Semantic Image Manipulation through Structured Representations
- Learning in Games with Lossy Feedback
- Learning Invariances using the Marginal Likelihood
- Learning Latent Subspaces in Variational Autoencoders
- Learning latent variable structured prediction models with Gaussian perturbations
- Learning Libraries of Subroutines for Neurally–Guided Bayesian Program Induction
- Learning long-range spatial dependencies with horizontal gated recurrent units
- Learning Loop Invariants for Program Verification
- Learning Optimal Reserve Price against Non-myopic Bidders
- Learning Others' Intentional Models in Multi-Agent Settings Using Interactive POMDPs
- Learning Overparameterized Neural Networks via Stochastic Gradient Descent on Structured Data
- Learning Pipelines with Limited Data and Domain Knowledge: A Study in Parsing Physics Problems
- Learning Plannable Representations with Causal InfoGAN
- Learning Safe Policies with Expert Guidance
- Learning semantic similarity in a continuous space
- Learning Signed Determinantal Point Processes through the Principal Minor Assignment Problem
- Learning SMaLL Predictors
- Learning sparse neural networks via sensitivity-driven regularization
- Learning Task Specifications from Demonstrations
- Learning Temporal Point Processes via Reinforcement Learning
- Learning to Decompose and Disentangle Representations for Video Prediction
- Learning to Exploit Stability for 3D Scene Parsing
- Learning to Infer Graphics Programs from Hand-Drawn Images
- Learning To Learn Around A Common Mean
- Learning to Multitask
- Learning to Navigate in Cities Without a Map
- Learning to Optimize Tensor Programs
- Learning to Play With Intrinsically-Motivated, Self-Aware Agents
- Learning to Reason with Third Order Tensor Products
- Learning to Reconstruct Shapes from Unseen Classes
- Learning to Repair Software Vulnerabilities with Generative Adversarial Networks
- Learning to Share and Hide Intentions using Information Regularization
- Learning to Solve SMT Formulas
- Learning to Specialize with Knowledge Distillation for Visual Question Answering
- Learning to Teach with Dynamic Loss Functions
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- Learning Versatile Filters for Efficient Convolutional Neural Networks
- Learning without the Phase: Regularized PhaseMax Achieves Optimal Sample Complexity
- Learning with SGD and Random Features
- Learn What Not to Learn: Action Elimination with Deep Reinforcement Learning
- Legendre Decomposition for Tensors
- Leveraged volume sampling for linear regression
- Leveraging the Exact Likelihood of Deep Latent Variable Models
- LF-Net: Learning Local Features from Images
- Life-Long Disentangled Representation Learning with Cross-Domain Latent Homologies
- Lifelong Inverse Reinforcement Learning
- Lifted Weighted Mini-Bucket
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- LinkNet: Relational Embedding for Scene Graph
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- Lipschitz-Margin Training: Scalable Certification of Perturbation Invariance for Deep Neural Networks
- Lipschitz regularity of deep neural networks: analysis and efficient estimation
- Local Differential Privacy for Evolving Data
- Long short-term memory and Learning-to-learn in networks of spiking neurons
- Loss Functions for Multiset Prediction
- Loss Surfaces, Mode Connectivity, and Fast Ensembling of DNNs
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- Low-Rank Tucker Decomposition of Large Tensors Using TensorSketch
- Low-shot Learning via Covariance-Preserving Adversarial Augmentation Networks
- Machine Learning for Geophysical & Geochemical Signals
- Machine Learning for Health (ML4H): Moving beyond supervised learning in healthcare
- Machine Learning for Molecules and Materials
- Machine Learning for Systems
- Machine Learning for the Developing World (ML4D): Achieving sustainable impact
- Machine Learning Meets Public Policy: What to Expect and How to Cope
- Machine Learning Open Source Software 2018: Sustainable communities
- MacNet: Transferring Knowledge from Machine Comprehension to Sequence-to-Sequence Models
- Making Algorithms Trustworthy: What Can Statistical Science Contribute to Transparency, Explanation and Validation?
- Mallows Models for Top-k Lists
- Manifold Structured Prediction
- Manifold-tiling Localized Receptive Fields are Optimal in Similarity-preserving Neural Networks
- Mapping Images to Scene Graphs with Permutation-Invariant Structured Prediction
- Masking: A New Perspective of Noisy Supervision
- Maximizing acquisition functions for Bayesian optimization
- Maximizing Induced Cardinality Under a Determinantal Point Process
- Maximum Causal Tsallis Entropy Imitation Learning
- Maximum-Entropy Fine Grained Classification
- Mean Field for the Stochastic Blockmodel: Optimization Landscape and Convergence Issues
- Mean-field theory of graph neural networks in graph partitioning
- Measures of distortion for machine learning
- Medical Imaging meets NIPS
- Memory Augmented Policy Optimization for Program Synthesis and Semantic Parsing
- Memory Replay GANs: Learning to Generate New Categories without Forgetting
- Mental Sampling in Multimodal Representations
- Mesh-TensorFlow: Deep Learning for Supercomputers
- MetaAnchor: Learning to Detect Objects with Customized Anchors
- MetaGAN: An Adversarial Approach to Few-Shot Learning
- Meta-Gradient Reinforcement Learning
- Meta-Learning MCMC Proposals
- MetaReg: Towards Domain Generalization using Meta-Regularization
- Meta-Reinforcement Learning of Structured Exploration Strategies
- Metric on Nonlinear Dynamical Systems with Perron-Frobenius Operators
- Middle-Out Decoding
- MiME: Multilevel Medical Embedding of Electronic Health Records for Predictive Healthcare
- Minimax Estimation of Neural Net Distance
- Minimax Statistical Learning with Wasserstein distances
- Mirrored Langevin Dynamics
- MixLasso: Generalized Mixed Regression via Convex Atomic-Norm Regularization
- Mixture Matrix Completion
- MLSys: Workshop on Systems for ML and Open Source Software
- Model-Agnostic Private Learning
- Model Agnostic Supervised Local Explanations
- Model-based targeted dimensionality reduction for neuronal population data
- Modeling and decision-making in the spatiotemporal domain
- Modeling Dynamic Missingness of Implicit Feedback for Recommendation
- Modeling the Physical World: Learning, Perception, and Control
- Modelling and unsupervised learning of symmetric deformable object categories
- Modelling sparsity, heterogeneity, reciprocity and community structure in temporal interaction data
- Modern Neural Networks Generalize on Small Data Sets
- Modular Networks: Learning to Decompose Neural Computation
- Monte-Carlo Tree Search for Constrained POMDPs
- Moonshine: Distilling with Cheap Convolutions
- MULAN: A Blind and Off-Grid Method for Multichannel Echo Retrieval
- Multi-Agent Generative Adversarial Imitation Learning
- Multi-Agent Reinforcement Learning via Double Averaging Primal-Dual Optimization
- Multi-armed Bandits with Compensation
- Multi-Class Learning: From Theory to Algorithm
- Multi-domain Causal Structure Learning in Linear Systems
- Multi-Layered Gradient Boosting Decision Trees
- Multilingual Anchoring: Interactive Topic Modeling and Alignment Across Languages
- Multimodal Generative Models for Scalable Weakly-Supervised Learning
- Multi-objective Maximization of Monotone Submodular Functions with Cardinality Constraint
- Multiple Instance Learning for Efficient Sequential Data Classification on Resource-constrained Devices
- Multiple-Step Greedy Policies in Approximate and Online Reinforcement Learning
- Multiplicative Weights Updates with Constant Step-Size in Graphical Constant-Sum Games
- Multitask Boosting for Survival Analysis with Competing Risks
- Multi-Task Learning as Multi-Objective Optimization
- Multi-Task Zipping via Layer-wise Neuron Sharing
- Multi-value Rule Sets for Interpretable Classification with Feature-Efficient Representations
- Multivariate Convolutional Sparse Coding for Electromagnetic Brain Signals
- Multivariate Time Series Imputation with Generative Adversarial Networks
- Multi-View Silhouette and Depth Decomposition for High Resolution 3D Object Representation
- Multi-Word Imputation and Sentence Expansion
- M-Walk: Learning to Walk over Graphs using Monte Carlo Tree Search
- NAIS-Net: Stable Deep Networks from Non-Autonomous Differential Equations
- Natasha 2: Faster Non-Convex Optimization Than SGD
- Navigating with Graph Representations for Fast and Scalable Decoding of Neural Language Models
- Nearly tight sample complexity bounds for learning mixtures of Gaussians via sample compression schemes
- Near Optimal Exploration-Exploitation in Non-Communicating Markov Decision Processes
- Near-Optimal Policies for Dynamic Multinomial Logit Assortment Selection Models
- Near-Optimal Time and Sample Complexities for Solving Markov Decision Processes with a Generative Model
- Negative Dependence, Stable Polynomials, and All That
- Negotiable Reinforcement Learning for Pareto Optimal Sequential Decision-Making
- Neighbourhood Consensus Networks
- NEON2: Finding Local Minima via First-Order Oracles
- Neural Architecture Optimization
- Neural Architecture Search with Bayesian Optimisation and Optimal Transport
- Neural Arithmetic Logic Units
- Neural Code Comprehension: A Learnable Representation of Code Semantics
- Neural Edit Operations for Biological Sequences
- Neural Guided Constraint Logic Programming for Program Synthesis
- Neural Interaction Transparency (NIT): Disentangling Learned Interactions for Improved Interpretability
- Neural Nearest Neighbors Networks
- Neural Networks Trained to Solve Differential Equations Learn General Representations
- Neural Ordinary Differential Equations
- Neural Proximal Gradient Descent for Compressive Imaging
- Neural-Symbolic VQA: Disentangling Reasoning from Vision and Language Understanding
- Neural Tangent Kernel: Convergence and Generalization in Neural Networks
- Neural Voice Cloning with a Few Samples
- NeurIPS 2018 Competition Track Day 1
- NeurIPS 2018 Competition Track Day 2
- New Insight into Hybrid Stochastic Gradient Descent: Beyond With-Replacement Sampling and Convexity
- NIPS 2018 workshop on Compact Deep Neural Networks with industrial applications
- NIPS 2018 Workshop on Meta-Learning
- NIPS Workshop on Machine Learning for Intelligent Transportation Systems 2018
- Non-Adversarial Mapping with VAEs
- Non-delusional Q-learning and value-iteration
- Non-Ergodic Alternating Proximal Augmented Lagrangian Algorithms with Optimal Rates
- Nonlocal Neural Networks, Nonlocal Diffusion and Nonlocal Modeling
- Non-Local Recurrent Network for Image Restoration
- Non-metric Similarity Graphs for Maximum Inner Product Search
- Non-monotone Submodular Maximization in Exponentially Fewer Iterations
- Nonparametric Bayesian Lomax delegate racing for survival analysis with competing risks
- Nonparametric Density Estimation under Adversarial Losses
- Nonparametric learning from Bayesian models with randomized objective functions
- Norm matters: efficient and accurate normalization schemes in deep networks
- Norm-Ranging LSH for Maximum Inner Product Search
- Objective and efficient inference for couplings in neuronal networks
- Object-Oriented Dynamics Predictor
- Occam's razor is insufficient to infer the preferences of irrational agents
- On Binary Classification in Extreme Regions
- On Controllable Sparse Alternatives to Softmax
- On Coresets for Logistic Regression
- One-Shot Unsupervised Cross Domain Translation
- On Fast Leverage Score Sampling and Optimal Learning
- On GANs and GMMs
- On gradient regularizers for MMD GANs
- On Learning Intrinsic Rewards for Policy Gradient Methods
- On Learning Markov Chains
- Online Adaptive Methods, Universality and Acceleration
- Online convex optimization for cumulative constraints
- Online Improper Learning with an Approximation Oracle
- Online Learning of Quantum States
- Online Learning with an Unknown Fairness Metric
- Online Reciprocal Recommendation with Theoretical Performance Guarantees
- Online Robust Policy Learning in the Presence of Unknown Adversaries
- Online Structured Laplace Approximations for Overcoming Catastrophic Forgetting
- Online Structure Learning for Feed-Forward and Recurrent Sum-Product Networks
- On Markov Chain Gradient Descent
- On Misinformation Containment in Online Social Networks
- On Neuronal Capacity
- On Oracle-Efficient PAC RL with Rich Observations
- On preserving non-discrimination when combining expert advice
- On the Convergence and Robustness of Training GANs with Regularized Optimal Transport
- On the Dimensionality of Word Embedding
- On the Global Convergence of Gradient Descent for Over-parameterized Models using Optimal Transport
- On the Local Hessian in Back-propagation
- On the Local Minima of the Empirical Risk
- Optimal Algorithms for Continuous Non-monotone Submodular and DR-Submodular Maximization
- Optimal Algorithms for Non-Smooth Distributed Optimization in Networks
- Optimal Subsampling with Influence Functions
- Optimistic optimization of a Brownian
- Optimization for Approximate Submodularity
- Optimization of Smooth Functions with Noisy Observations: Local Minimax Rates
- Optimization over Continuous and Multi-dimensional Decisions with Observational Data
- Orthogonally Decoupled Variational Gaussian Processes
- Out-of-Distribution Detection using Multiple Semantic Label Representations
- Out of the Box: Reasoning with Graph Convolution Nets for Factual Visual Question Answering
- Overcoming Language Priors in Visual Question Answering with Adversarial Regularization
- Overfitting or perfect fitting? Risk bounds for classification and regression rules that interpolate
- Overlapping Clustering Models, and One (class) SVM to Bind Them All
- PAC-Bayes bounds for stable algorithms with instance-dependent priors
- PAC-Bayes Tree: weighted subtrees with guarantees
- PacGAN: The power of two samples in generative adversarial networks
- PAC-learning in the presence of adversaries
- Parameters as interacting particles: long time convergence and asymptotic error scaling of neural networks
- Paraphrasing Complex Network: Network Compression via Factor Transfer
- Parsimonious Bayesian deep networks
- Parsimonious Quantile Regression of Financial Asset Tail Dynamics via Sequential Learning
- Partially-Supervised Image Captioning
- PatentAI: IP Infringement Detection with Enhanced Paraphrase Identification
- PCA of high dimensional random walks with comparison to neural network training
- Pelee: A Real-Time Object Detection System on Mobile Devices
- Perception, sensing, motion planning and robot control using AI for automated feeding of upper-extremity mobility impaired people
- Persistence Fisher Kernel: A Riemannian Manifold Kernel for Persistence Diagrams
- PG-TS: Improved Thompson Sampling for Logistic Contextual Bandits
- Phase Retrieval Under a Generative Prior
- Pipe-SGD: A Decentralized Pipelined SGD Framework for Distributed Deep Net Training
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- Plug-in Estimation in High-Dimensional Linear Inverse Problems: A Rigorous Analysis
- PointCNN: Convolution On X-Transformed Points
- Point process latent variable models of larval zebrafish behavior
- Poison Frogs! Targeted Clean-Label Poisoning Attacks on Neural Networks
- Policy-Conditioned Uncertainty Sets for Robust Markov Decision Processes
- Policy Optimization via Importance Sampling
- Policy Regret in Repeated Games
- Porcupine Neural Networks: Approximating Neural Network Landscapes
- Post: Device Placement with Cross-Entropy Minimization and Proximal Policy Optimization
- Posterior Concentration for Sparse Deep Learning
- Power-law efficient neural codes provide general link between perceptual bias and discriminability
- Practical Deep Stereo (PDS): Toward applications-friendly deep stereo matching
- Practical exact algorithm for trembling-hand equilibrium refinements in games
- Practical Methods for Graph Two-Sample Testing
- Precision and Recall for Time Series
- Predictive Approximate Bayesian Computation via Saddle Points
- Predictive Uncertainty Estimation via Prior Networks
- Predict Responsibly: Improving Fairness and Accuracy by Learning to Defer
- Preference Based Adaptation for Learning Objectives
- Privacy Amplification by Subsampling: Tight Analyses via Couplings and Divergences
- Privacy Preserving Machine Learning
- Probabilistic Matrix Factorization for Automated Machine Learning
- Probabilistic Model-Agnostic Meta-Learning
- Probabilistic Neural Programmed Networks for Scene Generation
- (Probably) Concave Graph Matching
- Processing of missing data by neural networks
- Provable Gaussian Embedding with One Observation
- Provable Variational Inference for Constrained Log-Submodular Models
- Provably Correct Automatic Sub-Differentiation for Qualified Programs
- Proximal Graphical Event Models
- Proximal SCOPE for Distributed Sparse Learning
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- Quadratic Decomposable Submodular Function Minimization
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- Quantifying Learning Guarantees for Convex but Inconsistent Surrogates
- Query Complexity of Bayesian Private Learning
- Query K-means Clustering and the Double Dixie Cup Problem
- Random Feature Stein Discrepancies
- Randomized Prior Functions for Deep Reinforcement Learning
- Realistic Evaluation of Deep Semi-Supervised Learning Algorithms
- Rectangular Bounding Process
- Recurrently Controlled Recurrent Networks
- Recurrent Relational Networks
- Recurrent Transformer Networks for Semantic Correspondence
- Recurrent World Models Facilitate Policy Evolution
- Reducing Network Agnostophobia
- Re-evaluating evaluation
- REFUEL: Exploring Sparse Features in Deep Reinforcement Learning for Fast Disease Diagnosis
- Regret bounds for meta Bayesian optimization with an unknown Gaussian process prior
- Regret Bounds for Online Portfolio Selection with a Cardinality Constraint
- Regret Bounds for Robust Adaptive Control of the Linear Quadratic Regulator
- Regularization Learning Networks: Deep Learning for Tabular Datasets
- Regularizing by the Variance of the Activations' Sample-Variances
- Reinforced Continual Learning
- Reinforcement Learning for Solving the Vehicle Routing Problem
- Reinforcement Learning of Theorem Proving
- Reinforcement Learning under Partial Observability
- Reinforcement Learning with Multiple Experts: A Bayesian Model Combination Approach
- Relating Leverage Scores and Density using Regularized Christoffel Functions
- Relational recurrent neural networks
- Relational Representation Learning
- Removing Hidden Confounding by Experimental Grounding
- Removing the Feature Correlation Effect of Multiplicative Noise
- RenderNet: A deep convolutional network for differentiable rendering from 3D shapes
- Reparameterization Gradient for Non-differentiable Models
- Representation Balancing MDPs for Off-policy Policy Evaluation
- Representation Learning for Treatment Effect Estimation from Observational Data
- Representation Learning of Compositional Data
- Representer Point Selection for Explaining Deep Neural Networks
- Reproducible, Reusable, and Robust Reinforcement Learning
- Reproducing Machine Learning Research on Binder
- ResNet with one-neuron hidden layers is a Universal Approximator
- Rest-Katyusha: Exploiting the Solution's Structure via Scheduled Restart Schemes
- RetGK: Graph Kernels based on Return Probabilities of Random Walks
- Reversible Recurrent Neural Networks
- Revisiting $(\epsilon, \gamma, \tau)$-similarity learning for domain adaptation
- Revisiting Decomposable Submodular Function Minimization with Incidence Relations
- Revisiting Multi-Task Learning with ROCK: a Deep Residual Auxiliary Block for Visual Detection
- Reward learning from human preferences and demonstrations in Atari
- rho-POMDPs have Lipschitz-Continuous epsilon-Optimal Value Functions
- Ridge Regression and Provable Deterministic Ridge Leverage Score Sampling
- RieszNets: Accurate Real-Time 2D/3D Image Super-Resolution
- Robot Learning in Homes: Improving Generalization and Reducing Dataset Bias
- Robust Detection of Adversarial Attacks by Modeling the Intrinsic Properties of Deep Neural Networks
- Robust Hypothesis Testing Using Wasserstein Uncertainty Sets
- Robust Learning of Fixed-Structure Bayesian Networks
- Robustness of conditional GANs to noisy labels
- Robust Subspace Approximation in a Stream
- Ruuh: A Deep Learning Based Conversational Social Agent
- Safe Active Learning for Time-Series Modeling with Gaussian Processes
- Sample-Efficient Reinforcement Learning with Stochastic Ensemble Value Expansion
- Sample Efficient Stochastic Gradient Iterative Hard Thresholding Method for Stochastic Sparse Linear Regression with Limited Attribute Observation
- Sanity Checks for Saliency Maps
- Scalable Bayesian Inference
- Scalable Coordinated Exploration in Concurrent Reinforcement Learning
- Scalable End-to-End Autonomous Vehicle Testing via Rare-event Simulation
- Scalable Hyperparameter Transfer Learning
- Scalable Laplacian K-modes
- Scalable methods for 8-bit training of neural networks
- Scalable Robust Matrix Factorization with Nonconvex Loss
- Scalar Posterior Sampling with Applications
- Scaling Gaussian Process Regression with Derivatives
- Scaling provable adversarial defenses
- Scaling the Poisson GLM to massive neural datasets through polynomial approximations
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- Second Workshop on Machine Learning for Creativity and Design
- See and Think: Disentangling Semantic Scene Completion
- SEGA: Variance Reduction via Gradient Sketching
- Self-Erasing Network for Integral Object Attention
- Self-Supervised Generation of Spatial Audio for 360° Video
- Semi-crowdsourced Clustering with Deep Generative Models
- Semidefinite relaxations for certifying robustness to adversarial examples
- Semi-supervised Deep Kernel Learning: Regression with Unlabeled Data by Minimizing Predictive Variance
- Semi-Supervised Learning with Declaratively Specified Entropy Constraints
- Sequence-to-Segment Networks for Segment Detection
- Sequential Attend, Infer, Repeat: Generative Modelling of Moving Objects
- Sequential Context Encoding for Duplicate Removal
- Sequential Test for the Lowest Mean: From Thompson to Murphy Sampling
- Sharp Bounds for Generalized Uniformity Testing
- Sigsoftmax: Reanalysis of the Softmax Bottleneck
- Simple, Distributed, and Accelerated Probabilistic Programming
- SimplE Embedding for Link Prediction in Knowledge Graphs
- Simple random search of static linear policies is competitive for reinforcement learning
- Single-Agent Policy Tree Search With Guarantees
- SING: Symbol-to-Instrument Neural Generator
- Size-Noise Tradeoffs in Generative Networks
- Sketching Method for Large Scale Combinatorial Inference
- SLANG: Fast Structured Covariance Approximations for Bayesian Deep Learning with Natural Gradient
- SLAYER: Spike Layer Error Reassignment in Time
- Smoothed Analysis of Discrete Tensor Decomposition and Assemblies of Neurons
- Smoothed analysis of the low-rank approach for smooth semidefinite programs
- Smooth Games Optimization and Machine Learning
- Snap ML: A Hierarchical Framework for Machine Learning
- SNIPER: Efficient Multi-Scale Training
- Soft-Gated Warping-GAN for Pose-Guided Person Image Synthesis
- Solving Large Sequential Games with the Excessive Gap Technique
- Solving Non-smooth Constrained Programs with Lower Complexity than $\mathcal{O}(1/\varepsilon)$: A Primal-Dual Homotopy Smoothing Approach
- Sparse Attentive Backtracking: Temporal Credit Assignment Through Reminding
- Sparse DNNs with Improved Adversarial Robustness
- Sparse PCA from Sparse Linear Regression
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- Spectral Filtering for General Linear Dynamical Systems
- Spectral Signatures in Backdoor Attacks
- SPIDER: Near-Optimal Non-Convex Optimization via Stochastic Path-Integrated Differential Estimator
- SplineNets: Continuous Neural Decision Graphs
- Stacked Semantics-Guided Attention Model for Fine-Grained Zero-Shot Learning
- Statistical and Computational Trade-Offs in Kernel K-Means
- Statistical Learning Theory: a Hitchhiker's Guide
- Statistical mechanics of low-rank tensor decomposition
- Statistical Optimality of Stochastic Gradient Descent on Hard Learning Problems through Multiple Passes
- Stein Variational Gradient Descent as Moment Matching
- Step Size Matters in Deep Learning
- Stimulus domain transfer in recurrent models for large scale cortical population prediction on video
- Stochastic Chebyshev Gradient Descent for Spectral Optimization
- Stochastic Composite Mirror Descent: Optimal Bounds with High Probabilities
- Stochastic Cubic Regularization for Fast Nonconvex Optimization
- Stochastic Expectation Maximization with Variance Reduction
- Stochastic Nested Variance Reduced Gradient Descent for Nonconvex Optimization
- Stochastic Nonparametric Event-Tensor Decomposition
- Stochastic Primal-Dual Method for Empirical Risk Minimization with O(1) Per-Iteration Complexity
- Stochastic Spectral and Conjugate Descent Methods
- Streaming Kernel PCA with $\tilde{O}(\sqrt{n})$ Random Features
- Streamlining Variational Inference for Constraint Satisfaction Problems
- Structural Causal Bandits: Where to Intervene?
- Structure-Aware Convolutional Neural Networks
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- Submodular Field Grammars: Representation, Inference, and Application to Image Parsing
- Submodular Maximization via Gradient Ascent: The Case of Deep Submodular Functions
- Supervised autoencoders: Improving generalization performance with unsupervised regularizers
- Supervising Unsupervised Learning
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- Symbolic Graph Reasoning Meets Convolutions
- Synaptic Strength For Convolutional Neural Network
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- TADAM: Task dependent adaptive metric for improved few-shot learning
- Tangent: Automatic differentiation using source-code transformation for dynamically typed array programming
- Task-Driven Convolutional Recurrent Models of the Visual System
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- Temporal alignment and latent Gaussian process factor inference in population spike trains
- Temporal Regularization for Markov Decision Process
- TensorFlow Dance - Learning to Dance via Machine Learning
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- TETRIS: TilE-matching the TRemendous Irregular Sparsity
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- TextWorld: A Learning Environment for Text-based Games
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- The Everlasting Database: Statistical Validity at a Fair Price
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- The Physical Systems Behind Optimization Algorithms
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- Thermostat-assisted continuously-tempered Hamiltonian Monte Carlo for Bayesian learning
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- The second Conversational AI workshop – today's practice and tomorrow's potential
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- Unsupervised Learning of Shape and Pose with Differentiable Point Clouds
- Unsupervised Learning of View-invariant Action Representations
- Unsupervised Text Style Transfer using Language Models as Discriminators
- Unsupervised Video Object Segmentation for Deep Reinforcement Learning
- Uplift Modeling from Separate Labels
- Using Large Ensembles of Control Variates for Variational Inference
- Using Trusted Data to Train Deep Networks on Labels Corrupted by Severe Noise
- Variance-Reduced Stochastic Gradient Descent on Streaming Data
- Variational Bayesian Monte Carlo
- Variational Inference with Tail-adaptive f-Divergence
- Variational Inverse Control with Events: A General Framework for Data-Driven Reward Definition
- Variational Learning on Aggregate Outputs with Gaussian Processes
- Variational Memory Encoder-Decoder
- Variational PDEs for Acceleration on Manifolds and Application to Diffeomorphisms
- Verifiable Reinforcement Learning via Policy Extraction
- VideoCapsuleNet: A Simplified Network for Action Detection
- Video Prediction via Selective Sampling
- Video-to-Video Synthesis
- Virtual Class Enhanced Discriminative Embedding Learning
- Visualization for Machine Learning
- Visualizing the Loss Landscape of Neural Nets
- Visually grounded interaction and language
- Visual Memory for Robust Path Following
- Visual Object Networks: Image Generation with Disentangled 3D Representations
- Visual Reinforcement Learning with Imagined Goals
- Wasserstein Distributionally Robust Kalman Filtering
- Wasserstein Variational Inference
- Watch Your Step: Learning Node Embeddings via Graph Attention
- Wavelet regression and additive models for irregularly spaced data
- Weakly Supervised Dense Event Captioning in Videos
- What Bodies Think About: Bioelectric Computation Outside the Nervous System, Primitive Cognition, and Synthetic Morphology
- When do random forests fail?
- Where Do You Think You're Going?: Inferring Beliefs about Dynamics from Behavior
- Which Neural Net Architectures Give Rise to Exploding and Vanishing Gradients?
- Why Is My Classifier Discriminatory?
- Why so gloomy? A Bayesian explanation of human pessimism bias in the multi-armed bandit task
- With Friends Like These, Who Needs Adversaries?
- Wordplay: Reinforcement and Language Learning in Text-based Games
- Workshop on Ethical, Social and Governance Issues in AI
- Workshop on Security in Machine Learning
- Zero-Shot Transfer with Deictic Object-Oriented Representation in Reinforcement Learning
- Zeroth-order (Non)-Convex Stochastic Optimization via Conditional Gradient and Gradient Updates
- Zeroth-Order Stochastic Variance Reduction for Nonconvex Optimization