Skip to yearly menu bar Skip to main content


Timezone: America/Vancouver
Filter Events
Tutorial

(Track2) Deeper Conversational AI

Pascale N Fung · Yun-Nung (Vivian) Chen · Zhaojiang Lin · Andrea Madotto
12:00 AM - 2:30 AM

Conversational AI systems interact with human users while completing user requests or simply chit-chat. These systems have applications ranging from personal assistance, health assistance to customer services, etc. In this three-part tutorial, we will first give an overview of the state-of-the-art modularized conversational AI approaches that are commonly adopted by task-oriented dialog systems. We will then give an overview of the current sequence to sequence , generation-based conversational AI approaches. We will discuss the challenges and shortcomings of vanilla generation-based models such as the lack of knowledge, consistency, empathy, controllability, versatility, etc. We will then highlight current work in addressing these challenges and in improving the depth of generation-based ConvAI. In the final part of the tutorial we will point out remaining challenges of conversational AI and possible directions for future research, including how to mitigate inappropriate responses and lifelong learning. We will also present an overview of shared tasks and publicly available resources for both modularized and generation-based conversational AI.

... more
Expo Demonstration

GAN Applications in Fashion Article Design and Outfit Rendering

Nana Yamazaki · Gökhan Yildirim · Nikolay Jetchev
12:00 AM - 1:00 AM

Advances in deep learning enabled sampling realistic images via generative modeling. This leads to new avenues in visual design and content creation, e.g. in fashion, where visualization is a key component. GANs can be used to create personalized visual content - e.g. rendering an outfit on a human body and creating unique designs - which can enrich shopping experience on e-commerce platforms. We will demo two projects, where we used GANs to create fashion images and enable novel applications:

  1. Fashion Outfit Renderer

We work on generating high-resolution images of fashion models wearing desired outfits and standing in different poses. At Zalando, we provide quality photographs of fashion models wearing the articles in our online selection. These photographs help customers visualise the garments they browse and enhance the shopping experience. But what if our customers wish to visualise an individually created outfit? Zalando has a large and evolving assortment of garments, which makes it infeasible to photograph all outfit combinations. To solve this challenge, we work on a “Fashion Renderer”, which creates a computer-generated image of a fashion model wearing an input outfit for an input body pose.

  1. Generative fashion design and search

Fashion customers often have a visual idea of what they would like to buy. However, finding the right article can be a time-consuming process, as people need to convert their visual ideas into accurate linguistic search terms, and search engines should correctly interpret customers’ search queries and retrieve relevant results. We enable search in a visual-only space by allowing customers to generate and breed different dress designs with using a style-based GAN. Created designs are used as a visual query to retrieve existing dresses in real time. This approach attempts to eliminate representation and interpretation problems in the word-based search and provides a novel way for searching fashion items.

... more
Tutorial
12:00 AM - 2:30 AM

A “sketch” is a data structure supporting some pre-specified set of queries and updates to a database while consuming space substantially (often exponentially) less than the information theoretic minimum required to store everything seen, and thus can also be seen as some form of functional compression. The advantages of sketching include less memory consumption, faster algorithms, and reduced bandwidth requirements in distributed computing environments. A "streaming" algorithm is one that dynamically updates a sketch as data is updated. In this tutorial we sketch (pun intended) a suite of tools from the sketching literature for counting problems, graph problems, finding frequent items, dimensionality reduction, and computational linear algebra, together with a discussion of lower bounds.

... more
Tutorial

(Track2) Equivariant Networks

Risi Kondor · Taco Cohen
2:30 AM - 5:00 AM

There is great interest in generalizing deep learning to more exotic types of data, such as graphs, chemical structures, volumetric images, omndirectional images, etc. In each case, the data has nontrivial structure and symmetries and the challenge is to find the right generalization of classical neural network layers like convolution to reflect this. It has become clear that in all of these cases and more, equivariance to symmetry transformations is the key principle that points us to an effective generalization.

New architectures inspired by this principle have already proved their effectiveness in multiple domains. However, some of the underlying ideas are still foreign to much of the community, partly because of the mathematics involved. The purpose of this tutorial is to bridge this gap by giving a very accessible introduction to this emerging area with many practical examples and details of how to implement equivariant architectures in existing deep learning frameworks.

Timetable: Part I (Taco Cohen) 0:00 - Introduction to equivariant networks 39:00 - Examples and applications 51:00 - Equivariant convolutions

Part II (Risi Kondor) 0:00 - Introduction 7:50 - Group Representations 27:35 - Designing equivariant Neurons 45:30 - Fourier theory 56:25 - Implementation

... more
Tutorial
2:30 AM - 5:00 AM

Integration and differentiation play key roles in machine learning.

We take a tour of some old and new results on methods and algorithms for integration and differentiation, in particular, for calculating expectations and slopes. We review numerical and Monte-Carlo integration for calculating expectations. We discuss the change-of-variables method leading to normalizing flows and discuss inference in time series to get there''. To getback again'', we review gradients for calculating slopes by the chain rule and automatic differentiation, the basis for backpropagation in neural networks. We discuss backpropagation in three settings: in probabilistic graphical models, through an equality constraint, and with an inequality constraint.

To complete the round-trip, we explore algorithms for calculating gradients of expectations, the basis of methods for variational inference, reinforcement learning, and experimental design.

... more
Tutorial

(Track3) Designing Learning Dynamics

Marta Garnelo · David Balduzzi · Wojciech Czarnecki
2:30 AM - 5:00 AM

In recent years machine learning research has been dominated by optimisation-based learning methods (take gradient descent, for example, which is ubiquitous in deep learning). However, while tools that operate under this paradigm have proven to be very powerful, they are often not well suited for tackling complex challenges such as highly non-stationary targets or explicit multi-agent systems. In an attempt to overcome such limitations, some researchers are instead turning towards open-ended methods, and considering how to design the underlying learning dynamics. This tutorial discusses how different tools can be applied to construct and combine adaptive objectives for populations of learners. We begin by providing background on the problem setting, basic tools and philosophy. In a second part we then dive into the basics of evolutionary computation. In particular, we frame the development of evolutionary methods as a focus shift away from gradient-free optimisers in search of more generic and powerful tools for designing learning dynamics. Finally, we provide a more detailed overview of techniques and research around training and evaluating populations of agents.

... more
Affinity Workshop

New In ML

Zhen Xu · Vanya Cohen · Shruti Mishra · MingYu Lu
3:00 AM - 1:15 PM

Is this your first time submitting to a top conference? Have you ever wanted your work recognized by a large and active community? Do you want to improve your paper writing, experiments, ideas, etc? Then, this workshop is exactly for you!
Our workshop welcomes contributors new to machine learning research. We have invited top NeurIPS reviewers to review your work and share their experiences with you in poster sessions and mentoring sessions. Our mission is to help you publish papers at next year’s NeurIPS conference, and generally provide you with the guidance you need to contribute to ML research fully and effectively!

... more
Tutorial
5:30 AM - 8:00 AM

The brain remains the only known example of a truly general-purpose intelligent system. The study of human and animal cognition has revealed key insights, such as the ideas of parallel distributed processing, biological vision, and learning from reward signals, that have heavily influenced the design of artificial learning systems. Many AI researchers continue to look to neuroscience as a source of inspiration and insight. A key difficulty is that neuroscience is a vast and heterogeneous area of study, encompassing a bewildering array of subfields. In this tutorial, we will seek to provide both a broad overview of neuroscience as a whole, as well as a focused look at two areas -- computational cognitive neuroscience and the neuroscience of learning in circuits -- that we believe are particularly relevant for AI researchers today. We will conclude by highlighting several ongoing lines of work that seek to import insights from these areas of neuroscience into AI, and vice versa.

... more
Tutorial
5:30 AM - 8:00 AM

The evaluation and optimization of machine learning systems have largely adopted well-known performance metrics like accuracy (for classification) or squared error (for regression). While these metrics are reusable across a variety of machine learning tasks, they make strong assumptions often not observed when situated in a broader technical or sociotechnical system. This is especially true in systems that interact with large populations of humans attempting to complete a goal or satisfy a need (e.g. search, recommendation, game-playing). In this tutorial, we will present methods for developing evaluation metrics grounded in what users expect of the system and how they respond to system decisions. The goal of this tutorial is both to share methods for designing user-based quantitative metrics and to motivate new research into optimizing for these more structured metrics.

... more
Affinity Workshop

Black in AI

Victor Silva · Flora Ponjou Tasse · Krystal Maughan · Eric Maigua · Charles Earl · Nwamaka (Amaka) Okafor · Ignatius Ezeani · Oloruntobiloba Olatunji · Foutse Yuehgoh · Salomey Osei · Ezinne Nwankwo · Joyce D. Williams
6:00 AM - 12:30 PM

Black in AI exists to create a space for sharing ideas, foster collaborations, and discuss initiatives to increase the presence of Black individuals in the field of AI. To this end, we hold an annual technical workshop series, run mentoring programs, and maintain various fora for fostering partnerships and collaborations with and among black AI researchers. The 4th Black in AI workshop and 1st virtual Black in AI workshop will consist of selected oral presentations, invited keynote speakers, a joint poster session with other affinity groups, sponsorship sessions, and socials. Our workshop exists to amplify the voices of black researchers at NeurIPS.

... more
Tutorial
8:00 AM - 10:30 AM

Deep learning models are bad at signalling failure: They tend to make predictions with high confidence, and this is problematic in real-world applications such as healthcare, self-driving cars, and natural language systems, where there are considerable safety implications, or where there are discrepancies between the training data and data that the model makes predictions on. There is a pressing need both for understanding when models should not make predictions and improving model robustness to natural changes in the data. This tutorial will give an overview of the landscape of uncertainty and robustness in deep learning. Namely, we examine calibration and out-of-distribution generalization as key tasks. Then we will go into a deep dive into promising avenues. This includes methods which average over multiple neural network predictions such as Bayesian neural nets, ensembles, and Gaussian processes; methods on the frontier of scale in terms of their overall parameter or prediction-time efficiency; and methods which encourage key inductive biases such as data augmentation. We ground these ideas in both empirical understanding and theory, and we provide practical recommendations with baselines and tips & tricks. Finally, we highlight open challenges in the field.

... more
Tutorial

Reinforcement learning (RL) provides a mathematical formalism for learning-based control that allows for acquisition of near-optimal behaviors by optimizing user-specified reward functions. While RL methods have received considerable attention recently due to impressive applications in many areas, the fact that RL requires a fundamentally online learning paradigm is one of the biggest obstacles to its widespread adoption. Online interaction is often impractical, because data collection is expensive (e.g., in robotics, or educational agents) or dangerous (e.g., in autonomous driving, or healthcare). An alternate approach is to utilize RL algorithms that effectively leverage previously collected experience without requiring online interaction. This has been referred to as batch RL, offline RL, or data-driven RL. Such algorithms hold tremendous promise for making it possible to turn datasets into powerful decision-making engines, similarly to how datasets have proven key to the success of supervised learning in vision and NLP. In this tutorial, we aim to provide the audience with the conceptual tools needed to both utilize offline RL as a tool, and to conduct research in this exciting area. We aim to provide an understanding of the challenges in offline RL, particularly in the context of modern deep RL methods, and describe some potential solutions that have been explored in recent work, along with applications. We will present classic and recent methods in a way that is accessible for practitioners, and also discuss the theoretical foundations for conducting research in this field. We will conclude with a discussion of open problems.

... more
Affinity Workshop

LXAI Research @ NeurIPS 2020

Maria Luisa Santiago · Laura Montoya · Pedro Braga · Karla Caballero Barajas · Sergio H Garrido Mejia · Eduardo Moya · Vinicius Caridá · Ariel Ruiz-Garcia · Ivan Arraut · Juan Banda · Josue Caro · Gissella Bejarano Nicho · Fabian Latorre · Carlos Miranda · Ignacio Lopez-Francos
8:00 AM - 7:00 PM

The workshop is a one-day event with invited speakers, oral presentations, and posters. The event brings together faculty, graduate students, research scientists, and engineers for an opportunity to connect and exchange ideas. There will be a panel discussion and a mentoring session to discuss current research trends and career choices in artificial intelligence and machine learning. While all presenters will identify primarily as Latinx, all are invited to attend.

... more
Tutorial

(Track1) Advances in Approximate Inference

Yingzhen Li · Cheng Zhang
8:00 AM - 10:30 AM

Bayesian probabilistic modelling provides a principled framework for coherent inference and prediction under uncertainty. Approximate inference addresses the key challenge of Bayesian computation, that is, the computation of the intractable posterior distribution and related quantities such as the Bayesian predictive distribution. Significant progress has been made in this field during the past 10 years, which enables a wide application of Bayesian modelling techniques to machine learning tasks in computer vision, natural language processing, reinforcement learning etc.

This tutorial offers a coherent summary of the recent advances in approximate inference. We will start the tutorial with an introduction to the approximate inference concept and the basics in variational inference. Then we will describe the fundamental aspects of the modern approximate inference, including scalable inference, Monte Carlo techniques, amortized inference, approximate posterior design, and optimisation objectives. The connections between these recent advances will also be discussed. Lastly, we will provide application examples of advanced approximate inference techniques to downstream uncertainty estimation and decision-making tasks and conclude with a discussion on future research directions.

Timetable Tutorial part 1: basics of approximate inference (approx. 30min) Coffee break & live Q&A 1 (approx. 10min) Tutorial part 2: advances 1 (approx. 30min) Coffee break & live Q&A 2 (approx. 10min) Tutorial part 3: advances 2 (approx. 30min) Coffee break & live Q&A 3 (approx. 10min) Tutorial part 3: applications (approx. 30min)

... more
Tutorial

(Track1) Abstraction & Reasoning in AI systems: Modern Perspectives

Francois Chollet · Melanie Mitchell · Christian Szegedy
11:00 AM - 1:30 PM

In this tutorial, we will provide modern perspectives on abstraction and reasoning in AI systems. Traditionally, symbolic and probabilistic methods have dominated the domains of concept formation, abstraction, and automated reasoning. More recently, deep learning-based approaches have led to breakthroughs in some domains, like tackling hard search problems such as games and combinatorial search tasks. However, the resulting systems are still limited in scope and capabilities, especially in producing interpretable results and verifiable abstractions. Here, we will address a set of questions: Why is an ability for conceptual abstraction essential for intelligence, in both humans and machines? How can we get machines to learn flexible and extendable concepts that can transfer between domains? What do we understand by "strong reasoning capabilities" and how do we measure these capabilities in AI systems? How do deep learning-based methods change the landscape of computer-assisted reasoning? What are the failure modes of such methods and possible solutions to these issues?

Schedule 7:00pm - 7:40pm UTC Speaker: Francois Chollet Title: Why abstraction is the key, and what we're still missing

7:40pm - 7:50pm UTC Questions

7:50pm - 8:30pm UTC Speaker: Melanie Mitchell Title: Mechanisms of abstraction and analogy in natural and artificial intelligence

8:30pm - 8:40pm UTC Questions

8:40pm - 9:20pm UTC Speaker: Christian Szegedy Title: Deep learning for mathematical reasoning

9:20pm - 9:30pm UTC Questions

... more
Tutorial

(Track3) Policy Optimization in Reinforcement Learning

Sham M Kakade · Martha White · Nicolas Le Roux
11:00 AM - 1:30 PM

This tutorial will cover policy gradients methods in reinforcement learning, with a focus on understanding foundational ideas from an optimization perspective. We will discuss the properties of the policy objective, in terms of two critical properties for convergence rates when using stochastic gradient approaches: variance and curvature. We will explain how the policy objective can be a particularly difficult optimization problem, as it can have large flat regions and stochastic samples of the gradient can be very high variance. We will first explain how to use standard tools from optimization to reduce the variance of the gradient estimate, as well as techniques to mitigate curvature issues. We will then discuss optimization improvements that leverage more knowledge about the objective, including the Markov property and how to modify the state distribution for more coverage. We will discuss how standard Actor-Critic methods with (off-policy) data re-use provide RL-specific variance reduction approaches. We will then conclude with an overview of what is known theoretically about the policy objective, where we discuss the role of entropy-regularization and exploration for mitigating curvature issues.

The tutorial website is

... more
Tutorial

The field of astrophysics has been an avid consumer—and also a developer—of new methods in data science (maybe even dating back to the invention of Bayesian inference). With constantly growing data volumes, increasingly complex and costly physical models, and demand for extremely precise measurements, astrophysics presents opportunities for innovation in machine learning (ML) methods.

In this tutorial, we will give a sense of the myriad connections between astrophysics and ML, and demonstrate that astrophysics is an ideal sandbox for developing and testing ML applications and innovations. We will also discuss areas where vanilla ML methods fail or require extension or elaboration to be competitive with traditional astronomy techniques.

Astronomical data falls into four broad types: imaging, spectroscopy, time series, and catalogs. We will discuss the scientific understandings and precise measurements that we hope to obtain from these data sets, the challenges specific to each of them, and the successes and opportunities for ML applications in these domains. We will demonstrate how to obtain and start working with current leading-edge public data sets of each type. Participants should expect to do hands-on work with the data during the tutorial (we’ll demo with Python and Jupyter, but any platform can play). By the end, we hope that participants will be able to download, visualize, and apply ML algorithms to astronomical data, in ways relevant to current research directions in astrophysics. DWH and KSF thank the members of the Astronomical Data Group at the Flatiron Institute for support with the ideas, code, and content in this tutorial.

... more
Affinity Poster Session

The Joint Affinity Groups poster session is a collaborative event between Black in AI, Indigenous in AI, LatinX in AI, Queer in AI, and Women in Machine Learning. This joint poster session will feature 190 posters across a variety of topics across machine learning. Please join us in Gather.Town!

Program book

... more

Tutorial
1:30 PM - 4:00 PM

Virtually all deep learning is built upon the notion of explicit computation: layers of a network are written in terms of their explicit step-by-step computations used to map inputs to outputs. But a rising trend in deep learning takes a different approach: implicit layers, where one instead specifies the conditions for a layer’s output to satisfy. Such architectures date back to early work on recurrent networks but have recently gained a great deal of attention as the approach behind Neural ODEs, Deep Equilibrium Models (DEQs), FFJORD, optimization layers, SVAEs, implicit meta-learning, and many other approaches. These methods can have substantial conceptual, computational, and modeling benefits: they often make it much easier to specify simple-yet-powerful architectures, can vastly reduce the memory consumption of deep networks, and allow more natural modeling of e.g. continuous-time phenomena.

This tutorial will provide a unified perspective on implicit layers, illustrating how the implicit modeling framework encompasses all the models discussed above, and providing a practical view of how to integrate such approaches into modern deep learning systems. We will cover the history and motivation of implicit layers, discuss how to solve the resulting "forward" inference problem, and then highlight how to compute gradients through such layers in the backward pass, via implicit differentiation. Throughout, we will highlight several applications of these methods in Neural ODEs, DEQs, and other settings. The tutorial will be accompanied by an interactive monograph on implicit layers: a set of interactive Colab notebooks with code in both the JAX and PyTorch libraries.

... more
Tutorial

(Track1) Federated Learning and Analytics: Industry Meets Academia

Brendan McMahan · Virginia Smith · Peter Kairouz
1:30 PM - 4:00 PM

Federated learning (FL) is a machine learning setting where many clients (e.g. mobile devices or whole organizations) collaboratively train a model under the orchestration of a central server (e.g. service provider), while keeping the training data decentralized. Similarly, federated analytics (FA) allows data scientists to generate analytical insight from the combined information in distributed datasets without requiring data centralization. Federated approaches embody the principles of focused data collection and minimization, and can mitigate many of the systemic privacy risks and costs resulting from traditional, centralized machine learning and data science approaches.

Motivated by the explosive growth in federated learning and analytics research, this tutorial will provide a gentle introduction to the area. The focus will be on cross-device federated learning, including deep dives on federated optimization and differentially privacy, but federated analytics and cross-silo federated learning will also be discussed. In addition to optimization and privacy, we will also introduce personalization, robustness, fairness, and systems challenges in the federated setting with an emphasis on open problems.

... more
Tutorial
1:30 PM - 4:00 PM

As machine learning is deployed in all aspects of society, it has become increasingly important to ensure stakeholders understand and trust these models. Decision makers must have a clear understanding of the model behavior so they can diagnose errors and potential biases in these models, and decide when and how to employ them. However, most accurate models that are deployed in practice are not interpretable, making it difficult for users to understand where the predictions are coming from, and thus, difficult to trust.

Recent work on explanation techniques in machine learning offers an attractive solution: they provide intuitive explanations for “any” machine learning model by approximating complex machine learning models with simpler ones.

In this tutorial, we will discuss several post hoc explanation methods, and focus on their advantages and shortcomings. We will cover three families of techniques: (a) single instance gradient-based attribution methods (saliency maps), (b) model agnostic explanations via perturbations, such as LIME/SHAP and counterfactual explanations, and (c) surrogate modeling for global interpretability, such as MUSE. For each of these approaches, we will provide their problem setup, prominent methods, example applications, and finally, discuss their vulnerabilities and shortcomings. We will conclude the tutorial with an overview of future directions and a discussion on open research problems. We hope to provide a practical and insightful introduction to explainability in machine learning.

... more
Invited Talk

Successful technological fields have a moment when they become pervasive, important, and noticed. They are deployed into the world and, inevitably, something goes wrong. A badly designed interface leads to an aircraft disaster. A buggy controller delivers a lethal dose of radiation to a cancer patient. The field must then choose to mature and take responsibility for avoiding the harms associated with what it is producing. Machine learning has reached this moment.

In this talk, I will argue that the community needs to adopt systematic approaches for creating robust artifacts that contribute to larger systems that impact the real human world. I will share perspectives from multiple researchers in machine learning, theory, computer perception, and education; discuss with them approaches that might help us to develop more robust machine-learning systems; and explore scientifically interesting problems that result from moving beyond narrow machine-learning algorithms to complete machine-learning systems.

... more
Speaker Bio
Charles Isbell
Dr. Charles Isbell received his bachelor's in Information and Computer Science from Georgia Tech, and his MS and PhD at MIT's AI Lab. Upon graduation, he worked at AT&T Labs/Research until 2002, when he returned to Georgia Tech to join the faculty as an Assistant Professor. He has served many roles since returning and is now The John P. Imlay Jr. Dean of the College of Computing. Charles’s research interests are varied but the unifying theme of his work has been using machine learning to build autonomous agents who engage directly with humans. His work has been featured in the popular press, congressional testimony, and in several technical collections. In parallel, Charles has also pursued reform in computing education. He was a chief architect of Threads, Georgia Tech’s structuring principle for computing curricula. Charles was also an architect for Georgia Tech’s First-of-its’s-kind MOOC-supported MS in Computer Science. Both efforts have received international attention, and been presented in the academic and popular press. In all his roles, he has continued to focus on issues of broadening participation in computing, and is the founding Executive Director for the Constellations Center for Equity in Computing. He is an AAAI Fellow and a Fellow of the ACM. Appropriately, his citation for ACM Fellow reads “for contributions to interactive machine learning; and for contributions to increasing access and diversity in computing”.
... more
Oral

Orals & Spotlights Track 03: Language/Audio Applications

Anshumali Shrivastava · Dilek Hakkani-Tur
6:00 PM - 9:00 PM
15 Events in this session
Tom B Brown · Benjamin Mann · Nick Ryder · Melanie Subbiah · Jared Kaplan · Prafulla Dhariwal · Arvind Neelakantan · Pranav Shyam · Girish Sastry · Amanda Askell · Sandhini Agarwal · Ariel Herbert-Voss · Gretchen M Krueger · Tom Henighan · Rewon Child · Aditya Ramesh · Daniel Ziegler · Jeffrey Wu · Clemens Winter · Chris Hesse · Mark Chen · Eric Sigler · Mateusz Litwin · Scott Gray · Benjamin Chess · Jack Clark · Christopher Berner · Sam McCandlish · Alec Radford · Ilya Sutskever · Dario Amodei
Jaehyeon Kim · Sungwon Kim · Jungil Kong · Sungroh Yoon
Teerapat Jenrungrot · Vivek Jayaram · Steve Seitz · Ira Kemelmacher-Shlizerman
Scott Wisdom · Efthymios Tzinis · Hakan Erdogan · Ron Weiss · Kevin Wilson · John R. Hershey
Jesse Vig · Sebastian Gehrmann · Yonatan Belinkov · Sharon Qian · Daniel Nevo · Yaron Singer · Stuart Shieber
Ehsan Hosseini-Asl · Bryan McCann · Chien-Sheng Wu · Semih Yavuz · Richard Socher
Zi-Hang Jiang · Weihao Yu · Daquan Zhou · Yunpeng Chen · Jiashi Feng · Shuicheng Yan
Chau Tran · Yuqing Tang · Xian Li · Jiatao Gu
Lu Hou · Zhiqi Huang · Lifeng Shang · Xin Jiang · Xiao Chen · Qun Liu
Yipeng Kang · Tonghan Wang · Gerard de Melo
Zhen Sun · Roei Schuster · Vitaly Shmatikov
Go to Event Page
Oral

Orals & Spotlights Track 01: Representation/Relational

Laurens van der Maaten · Fei Sha
6:00 PM - 9:00 PM
15 Events in this session
Daniel Bear · Chaofei Fan · Damian Mrowca · Yunzhu Li · Seth Alter · Aran Nayebi · Jeremy Schwartz · Li Fei-Fei · Jiajun Wu · Josh Tenenbaum · Daniel Yamins
Jiaming Song · Stefano Ermon
Renhao Wang · Marjan Albooyeh · Siamak Ravanbakhsh
Qi Cai · Yu Wang · Yingwei Pan · Ting Yao · Tao Mei
Yao-Hung Hubert Tsai · Han Zhao · Makoto Yamada · Louis-Philippe Morency · Russ Salakhutdinov
Jiaxuan You · Zhitao Ying · Jure Leskovec
Ching-Yao Chuang · Joshua Robinson · Yen-Chen Lin · Antonio Torralba · Stefanie Jegelka
Taylan Cemgil · Sumedh Ghaisas · Krishnamurthy Dvijotham · Sven Gowal · Pushmeet Kohli
Feng Wang · Huaping Liu · Di Guo · Sun Fuchun
Go to Event Page
Oral
6:00 PM - 9:00 PM
14 Events in this session
Meenakshi Khosla · Gia Ngo · Keith Jamison · Amy Kuceyeski · Mert Sabuncu
Joel Dapello · Tiago Marques · Martin Schrimpf · Franziska Geiger · David Cox · James J DiCarlo
Sercan Arik · Chun-Liang Li · Jinsung Yoon · Rajarishi Sinha · Arkady Epshteyn · Long Le · Vikas Menon · Shashank Singh · Leyou Zhang · Martin Nikoltchev · Yash Sonthalia · Hootan Nakhost · Elli Kanal · Tomas Pfister
Hu Liu · Jing LU · Xiwei Zhao · Sulong Xu · Hao Peng · Yutong Liu · Zehua Zhang · Jian Li · Junsheng Jin · Yongjun Bao · Weipeng Yan
Yu Takagi · Steven Kennerley · Jun-ichiro Hirayama · Laurence T Hunt
Go to Event Page
Oral
6:00 PM - 9:00 PM
15 Events in this session
Kyunghyun Lee · Byeong-Uk Lee · Ukcheol Shin · In So Kweon
Ruo Yu Tao · Vincent Francois-Lavet · Joelle Pineau
Michael Dennis · Natasha Jaques · Eugene Vinitsky · Alexandre Bayen · Stuart Russell · Andrew Critch · Sergey Levine
Yiming Zhang · Quan Vuong · Keith Ross
Bo Dai · Ofir Nachum · Yinlam Chow · Lihong Li · Csaba Szepesvari · Dale Schuurmans
Yingjie Fei · Zhuoran Yang · Yudong Chen · Zhaoran Wang · Qiaomin Xie
Fei Feng · Ruosong Wang · Wotao Yin · Simon Du · Lin Yang
Fan Yang · Alina Vereshchaka · Changyou Chen · Wen Dong
Kaiqing Zhang · Sham Kakade · Tamer Basar · Lin Yang
Matteo Turchetta · Andrey Kolobov · Shital Shah · Andreas Krause · Alekh Agarwal
Go to Event Page
Poster
9:00 PM - 11:00 PM
173 Events in this session
Weiwei Kong · Walid Krichene · Nicolas E Mayoraz · Steffen Rendle · Li Zhang
Zhibin Li · jian zhang · Yongshun Gong · Yazhou Yao · Qiang Wu
Sung Woo Park · Dong Wook Shu · Junseok Kwon
Nimit Sohoni · Jared Dunnmon · Geoffrey Angus · Albert Gu · Christopher Ré
Shenfei Pei · Feiping Nie · Rong Wang · Xuelong Li
Seyed Esmaeili · Brian Brubach · Leonidas Tsepenekas · John Dickerson
Binbin Jin · Defu Lian · Zheng Liu · Qi Liu · Jianhui Ma · Xing Xie · Enhong Chen
Long Chen · Yuan Yao · Feng Xu · Miao Xu · Hanghang Tong
Hexuan Liu · Yunfeng Cai · You-Lin Chen · Ping Li
Lingxiao Huang · K Sudhir · Nisheeth Vishnoi
Yingjie Wang · Hong Chen · Feng Zheng · Chen Xu · Tieliang Gong · Yanhong Chen
Xu Yang · Cheng Deng · Kun Wei · Junchi Yan · Wei Liu
Da Xu · Chuanwei Ruan · Evren Korpeoglu · Sushant Kumar · Kannan Achan
Zhongqi Yue · Hanwang Zhang · Qianru Sun · Xian-Sheng Hua
Yao-Hung Hubert Tsai · Han Zhao · Makoto Yamada · Louis-Philippe Morency · Russ Salakhutdinov
Jiaming Song · Stefano Ermon
Jiuxiang Gu · Jason Kuen · Shafiq Joty · Jianfei Cai · Vlad I. Morariu · Handong Zhao · Tong Sun
Ching-Yao Chuang · Joshua Robinson · Yen-Chen Lin · Antonio Torralba · Stefanie Jegelka
Taylan Cemgil · Sumedh Ghaisas · Krishnamurthy Dvijotham · Sven Gowal · Pushmeet Kohli
Yaodong Yu · Kwan Ho Ryan Chan · Chong You · Chaobing Song · Yi Ma
Qizhe Xie · Zihang Dai · Eduard Hovy · Thang Luong · Quoc V Le
Uchenna Akujuobi · Jun Chen · Mohamed Elhoseiny · Michael Spranger · Xiangliang Zhang
Yannis Kalantidis · Mert Bulent Sariyildiz · Noe Pion · Philippe Weinzaepfel · Diane Larlus
Yue Cao · Zhenda Xie · Bin Liu · Yutong Lin · Zheng Zhang · Han Hu
Jinsung Yoon · Yao Zhang · James Jordon · Mihaela van der Schaar
Feng Wang · Huaping Liu · Di Guo · Sun Fuchun
Qi Cai · Yu Wang · Yingwei Pan · Ting Yao · Tao Mei
Yukuan Yang · Fangyun Wei · Miaojing Shi · Guoqi Li
Zunlei Feng · Yongming He · Xinchao Wang · Xin Gao · Jie Lei · Cheng Jin · Mingli Song
Youngsung Kim · Jinwoo Shin · Eunho Yang · Sung Ju Hwang
Heejong Bong · Zongge Liu · Zhao Ren · Matthew Smith · Valerie Ventura · Robert E Kass
Hamid Jalalzai · Pierre Colombo · Chloé Clavel · Eric Gaussier · Giovanna Varni · Emmanuel Vignon · Anne Sabourin
Yinuo Guo · Zeqi Lin · Jian-Guang Lou · Dongmei Zhang
Ehsan Hosseini-Asl · Bryan McCann · Chien-Sheng Wu · Semih Yavuz · Richard Socher
Ashutosh Adhikari · Xingdi Yuan · Marc-Alexandre Côté · Mikuláš Zelinka · Marc-Antoine Rondeau · Romain Laroche · Pascal Poupart · Jian Tang · Adam Trischler · Will Hamilton
Yipeng Kang · Tonghan Wang · Gerard de Melo
Rakshit Trivedi · Hongyuan Zha
Chuan Wen · Jierui Lin · Trevor Darrell · Dinesh Jayaraman · Yang Gao
Yu Takagi · Steven Kennerley · Jun-ichiro Hirayama · Laurence T Hunt
Meenakshi Khosla · Gia Ngo · Keith Jamison · Amy Kuceyeski · Mert Sabuncu
Xi Zhang · Xiaolin Wu
Siddharth Desai · Ishan Durugkar · Haresh Karnan · Garrett Warnell · Josiah Hanna · Peter Stone
Tom B Brown · Benjamin Mann · Nick Ryder · Melanie Subbiah · Jared Kaplan · Prafulla Dhariwal · Arvind Neelakantan · Pranav Shyam · Girish Sastry · Amanda Askell · Sandhini Agarwal · Ariel Herbert-Voss · Gretchen M Krueger · Tom Henighan · Rewon Child · Aditya Ramesh · Daniel Ziegler · Jeffrey Wu · Clemens Winter · Chris Hesse · Mark Chen · Eric Sigler · Mateusz Litwin · Scott Gray · Benjamin Chess · Jack Clark · Christopher Berner · Sam McCandlish · Alec Radford · Ilya Sutskever · Dario Amodei
Junliang Guo · Zhirui Zhang · Linli Xu · Hao-Ran Wei · Boxing Chen · Enhong Chen
Ming Ding · Chang Zhou · Hongxia Yang · Jie Tang
Kaitao Song · Xu Tan · Tao Qin · Jianfeng Lu · Tie-Yan Liu
Wenhui Wang · Furu Wei · Li Dong · Hangbo Bao · Nan Yang · Ming Zhou
Zachary Brown · Nathaniel Robinson · David Wingate · Nancy Fulda
Thomas Scialom · Paul-Alexis Dray · Sylvain Lamprier · Benjamin Piwowarski · Jacopo Staiano
Zi-Hang Jiang · Weihao Yu · Daquan Zhou · Yunpeng Chen · Jiashi Feng · Shuicheng Yan
Jesse Vig · Sebastian Gehrmann · Yonatan Belinkov · Sharon Qian · Daniel Nevo · Yaron Singer · Stuart Shieber
Chau Tran · Yuqing Tang · Xian Li · Jiatao Gu
Lu Hou · Zhiqi Huang · Lifeng Shang · Xin Jiang · Xiao Chen · Qun Liu
Mike Lewis · Marjan Ghazvininejad · Gargi Ghosh · Armen Aghajanyan · Sida Wang · Luke Zettlemoyer
Michael Cogswell · Jiasen Lu · Rishabh Jain · Stefan Lee · Devi Parikh · Dhruv Batra
Manzil Zaheer · Guru Guruganesh · Kumar Avinava Dubey · Joshua Ainslie · Chris Alberti · Santiago Ontanon · Philip Pham · Anirudh Ravula · Qifan Wang · Li Yang · Amr Ahmed
Ajil Jalal · Liu Liu · Alex Dimakis · Constantine Caramanis
Tarik Dzanic · Karan Shah · Freddie Witherden
Alon Gonen · Shachar Lovett · Michal Moshkovitz
Max Hopkins · Daniel Kane · Shachar Lovett
Guy Blanc · Neha Gupta · Jane Lange · Li-Yang Tan
Luofeng Liao · You-Lin Chen · Zhuoran Yang · Bo Dai · Mladen Kolar · Zhaoran Wang
Parthe Pandit · Mojtaba Sahraee Ardakan · Sundeep Rangan · Philip Schniter · Alyson Fletcher
Jy-yong Sohn · Dong-Jun Han · Beongjun Choi · Jaekyun Moon
Aditya Gangrade · Bobak Nazer · Venkatesh Saligrama
Alexander Moreno · Zhenke Wu · Jamie Roslyn Yap · Cho Lam · David Wetter · Inbal Nahum-Shani · Walter Dempsey · James Rehg
Gen Li · Yuting Wei · Yuejie Chi · Yuantao Gu · Yuxin Chen
Yue Wu · Weitong ZHANG · Pan Xu · Quanquan Gu
Jongmin Lee · Byung-Jun Lee · Kee-Eung Kim
Guangxiang Zhu · Minghao Zhang · Honglak Lee · Chongjie Zhang
Yiming Zhang · Quan Vuong · Keith Ross
Dongsheng Ding · Kaiqing Zhang · Tamer Basar · Mihailo Jovanovic
Tianhe Yu · Garrett Thomas · Lantao Yu · Stefano Ermon · James Zou · Sergey Levine · Chelsea Finn · Tengyu Ma
Feiyang Pan · Jia He · Dandan Tu · Qing He
Kaiqing Zhang · Sham Kakade · Tamer Basar · Lin Yang
Rahul Kidambi · Aravind Rajeswaran · Praneeth Netrapalli · Thorsten Joachims
Constantinos Daskalakis · Dylan Foster · Noah Golowich
Yao Liu · Adith Swaminathan · Alekh Agarwal · Emma Brunskill
Chih-Hui Ho · Nuno Nvasconcelos
Qijian Zhang · Runmin Cong · Junhui Hou · Chongyi Li · Yao Zhao
Jaehyeon Kim · Sungwon Kim · Jungil Kong · Sungroh Yoon
Teerapat Jenrungrot · Vivek Jayaram · Steve Seitz · Ira Kemelmacher-Shlizerman
Taesung Park · Jun-Yan Zhu · Oliver Wang · Jingwan Lu · Eli Shechtman · Alexei Efros · Richard Zhang
Wenbo Li · Kun Zhou · Lu Qi · Nianjuan Jiang · Jiangbo Lu · Jiaya Jia
Shanshan Zhao · Mingming Gong · Tongliang Liu · Huan Fu · Dacheng Tao
Alexandre Carlier · Martin Danelljan · Alexandre Alahi · Radu Timofte
Yuanbiao Gou · Boyun Li · Zitao Liu · Songfan Yang · Xi Peng
Yicong Hong · Cristian Rodriguez · Yuankai Qi · Qi Wu · Stephen Gould
Lu Chi · Borui Jiang · Yadong Mu
Joel Dapello · Tiago Marques · Martin Schrimpf · Franziska Geiger · David Cox · James J DiCarlo
Chencheng Xu · Qiao Liu · Minlie Huang · Tao Jiang
Aaron Defazio · Tullie Murrell · Michael Recht
Yuan Xue · Nan Du · Anne Mottram · Martin Seneviratne · Andrew Dai
Sercan Arik · Chun-Liang Li · Jinsung Yoon · Rajarishi Sinha · Arkady Epshteyn · Long Le · Vikas Menon · Shashank Singh · Leyou Zhang · Martin Nikoltchev · Yash Sonthalia · Hootan Nakhost · Elli Kanal · Tomas Pfister
Zijie Zhang · Zeru Zhang · Yang Zhou · Yelong Shen · Ruoming Jin · Dejing Dou
Sifan Wu · Xi Xiao · Qianggang Ding · Peilin Zhao · Ying Wei · Junzhou Huang
Tuan Anh Nguyen · Anh Tran
Duncan McElfresh · Michael Curry · Tuomas Sandholm · John Dickerson
Jiancheng YANG · Yangzhou Jiang · Xiaoyang Huang · Bingbing Ni · Chenglong Zhao
Zhen Sun · Roei Schuster · Vitaly Shmatikov
Jiaxuan You · Zhitao Ying · Jure Leskovec
Daniel Bear · Chaofei Fan · Damian Mrowca · Yunzhu Li · Seth Alter · Aran Nayebi · Jeremy Schwartz · Li Fei-Fei · Jiajun Wu · Josh Tenenbaum · Daniel Yamins
Renhao Wang · Marjan Albooyeh · Siamak Ravanbakhsh
Jiahao Su · Shiqi Wang · Furong Huang
Yihong Gu · Weizhong Zhang · Cong Fang · Jason Lee · Tong Zhang
Xinjie Fan · Shujian Zhang · Bo Chen · Mingyuan Zhou
Hu Liu · Jing LU · Xiwei Zhao · Sulong Xu · Hao Peng · Yutong Liu · Zehua Zhang · Jian Li · Junsheng Jin · Yongjun Bao · Weipeng Yan
Zhijie Deng · Yinpeng Dong · Shifeng Zhang · Jun Zhu
Woojeong Kim · Suhyun Kim · Mincheol Park · Geunseok Jeon
Haoran You · Xiaohan Chen · Yongan Zhang · Chaojian Li · Sicheng Li · Zihao Liu · Zhangyang Wang · Yingyan Lin
Hidenori Tanaka · Daniel Kunin · Daniel Yamins · Surya Ganguli
Geondo Park · June Yong Yang · Sung Ju Hwang · Eunho Yang
Cédric Colas · Tristan Karch · Nicolas Lair · Jean-Michel Dussoux · Clément Moulin-Frier · Peter F Dominey · Pierre-Yves Oudeyer
Kyunghyun Lee · Byeong-Uk Lee · Ukcheol Shin · In So Kweon
Tongzhou Mu · Jiayuan Gu · Zhiwei Jia · Hao Tang · Hao Su
Han Zheng · Pengfei Wei · Jing Jiang · Guodong Long · Qinghua Lu · Chengqi Zhang
Wentao Weng · Harsh Gupta · Niao He · Lei Ying · R. Srikant
Ruo Yu Tao · Vincent Francois-Lavet · Joelle Pineau
Meng Zhou · Ken Liu · Pengwei Sui · Yixuan Li · Yuk Ying Chung
Gang Wang · Songtao Lu · Georgios Giannakis · Gerald Tesauro · Jian Sun
Kaiqing Zhang · TAO SUN · Yunzhe Tao · Sahika Genc · Sunil Mallya · Tamer Basar
Fan Yang · Alina Vereshchaka · Changyou Chen · Wen Dong
Michael Dennis · Natasha Jaques · Eugene Vinitsky · Alexandre Bayen · Stuart Russell · Andrew Critch · Sergey Levine
Minhae Kwon · Saurabh Daptardar · Paul R Schrater · Xaq Pitkow
Matteo Turchetta · Andrey Kolobov · Shital Shah · Andreas Krause · Alekh Agarwal
Gen Li · Yuting Wei · Yuejie Chi · Yuantao Gu · Yuxin Chen
Mengjiao (Sherry) Yang · Ofir Nachum · Bo Dai · Lihong Li · Dale Schuurmans
Yingjie Fei · Zhuoran Yang · Zhaoran Wang · Qiaomin Xie
Kianté Brantley · Miro Dudik · Thodoris Lykouris · Sobhan Miryoosefi · Max Simchowitz · Aleksandrs Slivkins · Wen Sun
Ziyang Tang · Yihao Feng · Na Zhang · Jian Peng · Qiang Liu
Bo Dai · Ofir Nachum · Yinlam Chow · Lihong Li · Csaba Szepesvari · Dale Schuurmans
Yingjie Fei · Zhuoran Yang · Yudong Chen · Zhaoran Wang · Qiaomin Xie
Xuezhou Zhang · Yuzhe Ma · Adish Singla
Fei Feng · Ruosong Wang · Wotao Yin · Simon Du · Lin Yang
Zhuoran Yang · Chi Jin · Zhaoran Wang · Mengdi Wang · Michael Jordan
Shuang Qiu · Xiaohan Wei · Zhuoran Yang · Jieping Ye · Zhaoran Wang
Sahin Lale · Kamyar Azizzadenesheli · Babak Hassibi · Anima Anandkumar
Chenkai Yu · Guanya Shi · Soon-Jo Chung · Yisong Yue · Adam Wierman
Sham Kakade · Akshay Krishnamurthy · Kendall Lowrey · Motoya Ohnishi · Wen Sun
Go to Event Page