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Author Information
John Langford (Microsoft Research)
John Langford is a machine learning research scientist, a field which he says "is shifting from an academic discipline to an industrial tool". He is the author of the weblog hunch.net and the principal developer of Vowpal Wabbit. John works at Microsoft Research New York, of which he was one of the founding members, and was previously affiliated with Yahoo! Research, Toyota Technological Institute, and IBM's Watson Research Center. He studied Physics and Computer Science at the California Institute of Technology, earning a double bachelor's degree in 1997, and received his Ph.D. in Computer Science from Carnegie Mellon University in 2002. He was the program co-chair for the 2012 International Conference on Machine Learning.
Lihong Li (Amazon)
Tong Zhang (The Hong Kong University of Science and Technology)
Related Events (a corresponding poster, oral, or spotlight)
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2008 Spotlight: Sparse Online Learning via Truncated Gradient »
Wed. Dec 10th 01:25 -- 01:26 AM Room
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2022 : Agent-Controller Representations: Principled Offline RL with Rich Exogenous Information »
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2020 Oral: Escaping the Gravitational Pull of Softmax »
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2019 : Closing Remarks »
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2019 : Poster and Coffee Break 2 »
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2019 : Poster Spotlight 2 »
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2019 Workshop: The Optimization Foundations of Reinforcement Learning »
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2019 : Opening Remarks »
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2019 Poster: A Kernel Loss for Solving the Bellman Equation »
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2019 Poster: DualDICE: Behavior-Agnostic Estimation of Discounted Stationary Distribution Corrections »
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2019 Spotlight: DualDICE: Behavior-Agnostic Estimation of Discounted Stationary Distribution Corrections »
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2018 : Hierarchical reinforcement learning for composite-task dialogues »
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2018 Poster: Breaking the Curse of Horizon: Infinite-Horizon Off-Policy Estimation »
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2018 Spotlight: Breaking the Curse of Horizon: Infinite-Horizon Off-Policy Estimation »
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2018 Poster: Adversarial Attacks on Stochastic Bandits »
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2017 Workshop: From 'What If?' To 'What Next?' : Causal Inference and Machine Learning for Intelligent Decision Making »
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2017 Poster: Q-LDA: Uncovering Latent Patterns in Text-based Sequential Decision Processes »
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2016 : A Contextual Research Program »
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2016 Poster: Exact Recovery of Hard Thresholding Pursuit »
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2016 Poster: Learning Additive Exponential Family Graphical Models via $\ell_{2,1}$-norm Regularized M-Estimation »
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2016 Poster: Active Learning with Oracle Epiphany »
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2015 Poster: Quartz: Randomized Dual Coordinate Ascent with Arbitrary Sampling »
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2015 Poster: Local Smoothness in Variance Reduced Optimization »
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2015 Poster: Semi-supervised Convolutional Neural Networks for Text Categorization via Region Embedding »
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2015 Spotlight: Semi-supervised Convolutional Neural Networks for Text Categorization via Region Embedding »
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2014 Poster: Scalable Non-linear Learning with Adaptive Polynomial Expansions »
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2013 Poster: Accelerating Stochastic Gradient Descent using Predictive Variance Reduction »
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2013 Poster: Accelerated Mini-Batch Stochastic Dual Coordinate Ascent »
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2013 Tutorial: Learning to Interact »
John Langford -
2012 Workshop: Modern Nonparametric Methods in Machine Learning »
Sivaraman Balakrishnan · Arthur Gretton · Mladen Kolar · John Lafferty · Han Liu · Tong Zhang -
2012 Poster: Selective Labeling via Error Bound Minimization »
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2011 Workshop: Relations between machine learning problems - an approach to unify the field »
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2011 Poster: An Empirical Evaluation of Thompson Sampling »
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2011 Poster: Learning to Search Efficiently in High Dimensions »
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2011 Poster: Spectral Methods for Learning Multivariate Latent Tree Structure »
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2011 Poster: Greedy Model Averaging »
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2010 Workshop: Learning on Cores, Clusters, and Clouds »
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2010 Spotlight: Learning from Logged Implicit Exploration Data »
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2010 Poster: Learning from Logged Implicit Exploration Data »
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2010 Poster: Deep Coding Network »
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2010 Poster: Agnostic Active Learning Without Constraints »
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2010 Poster: Parallelized Stochastic Gradient Descent »
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2009 Poster: Multi-Label Prediction via Compressed Sensing »
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2009 Poster: Nonlinear Learning using Local Coordinate Coding »
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2009 Oral: Multi-Label Prediction via Compressed Sensing »
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2008 Poster: Adaptive Forward-Backward Greedy Algorithm for Sparse Learning with Linear Models »
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2008 Oral: Adaptive Forward-Backward Greedy Algorithm for Sparse Learning with Linear Models »
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2008 Poster: Multi-stage Convex Relaxation for Learning with Sparse Regularization »
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2008 Poster: Predictive Indexing for Fast Search »
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2007 Workshop: Principles of Learning Problem Design »
John Langford · Alina Beygelzimer -
2007 Poster: A General Boosting Method and its Application to Learning Ranking Functions for Web Search »
Zhaohui Zheng · Hongyuan Zha · Tong Zhang · Olivier Chapelle · Keke Chen · Gordon Sun -
2007 Poster: The Epoch-Greedy Algorithm for Multi-armed Bandits with Side Information »
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2006 Poster: Learning on Graph with Laplacian Regularization »
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