A list of all invited talks, tutorials and presentations at Neural Information Processing Systems (NIPS) 2016 conference held at Barcelona and their resources
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Yann LeCun
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Intelligent Biosphere
Drew Purves
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Engineering Principles From Stable and Developing Brains
Saket Navlakha
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Machine Learning and Likelihood-Free Inference in Particle Physics
Kyle Cranmer
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Dynamic Legged Robots
Marc Raibert
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Learning About the Brain: Neuroimaging and Beyond
Irina Rish
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Reproducible Research: the Case of the Human Microbiome
Susan Holmes
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Crowdsourcing: Beyond Label Generation
Jennifer Wortman Vaughan
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Deep Reinforcement Learning Through Policy Optimization
Pieter Abbeel · John Schulman
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Variational Inference: Foundations and Modern Methods
David Blei · Shakir Mohamed · Rajesh Ranganath
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Theory and Algorithms for Forecasting Non-Stationary Time Series
Vitaly Kuznetsov · Mehryar Mohri
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Nuts and Bolts of Building Applications using Deep Learning
Andrew Y Ng
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Natural Language Processing for Computational Social Science
Cristian Danescu-Niculescu-Mizil · Lillian Lee
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Generative Adversarial Networks
Ian Goodfellow
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Large-Scale Optimization: Beyond Stochastic Gradient Descent and Convexity - Part I & Part II
Suvrit Sra · Francis Bach
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ML Foundations and Methods for Precision Medicine and Healthcare
Suchi Saria · Peter Schulam
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Designing Algorithms for Practical Machine Learning
Maya Gupta, Google Research.
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On the Expressive Power of Deep Neural Networks
Maithra Raghu, Cornell Univ / Google Brain.
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Sara Magliacane, VU Univ Amsterdam.
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Towards a Reasoning Engine for Individualizing Healthcare
Suchi Saria, John Hopkins Univ.
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Learning Representations from Time Series Data through Contextualized LSTMs
Madalina Fiterau, Stanford Univ.
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Towards Conversational Recommender Systems
Konstantina Christakopoulou, Univ Minnesota.
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Large-Scale Machine Learning through Spectral Methods: Theory & Practice
Anima Anandkumar, Amazon / UC Irvine.
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Tamara Broderick, MIT and Sinead Williamson, UT Austin
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Amy Zhang, Facebook.
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Graphons and Machine Learning: Estimation of Sparse Massive Networks
Jennifer Chayes, Microsoft Research.
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David Lopez-Paz · Leon Bottou · Alec Radford
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Introduction to Generative Adversarial Networks
Ian Goodfellow
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Soumith Chintala
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Learning features to distinguish distributions
Arthur Gretton
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Training Generative Neural Samplers using Variational Divergence
Sebastian Nowozin
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Adversarially Learned Inference (ALI) and BiGANs
Aaron Courville
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Energy-Based Adversarial Training and Video Prediction
Yann LeCun
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David Silver · Satinder Singh · Pieter Abbeel · Xi Chen
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Learning representations by stochastic gradient descent in cross-validation error
Rich Sutton
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The Nuts and Bolts of Deep Reinforcement Learning Research
John Schulman
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Raia Hadsell
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Large-Scale Self-Supervised Robot Learning
Chelsea Finn
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Challenges for human-level learning in Deep RL
Josh Tenenbaum
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Task Generalization via Deep Reinforcement Learning
Junhyuk Oh
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Matko Bošnjak · Nando de Freitas · Tejas D Kulkarni · Arvind Neelakantan · Scott E Reed · Sebastian Riedel · Tim Rocktäschel
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What use is Abstraction in Deep Program Induction?
Stephen Muggleton
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In Search of Strong Generalization: Building Structured Models in the Age of Neural Networks
Daniel Tarlow
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Learning Program Representation: Symbols to Semantics
Charles Sutton
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From temporal abstraction to programs
Doina Precup
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Learning to Compose by Delegation
Rob Fergus
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How Can We Write Large Programs without Thinking?
Percy Liang
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Program Synthesis and Machine Learning
Martin Vechev
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Limitations of RNNs: a computational perspective
Ed Grefenstette
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Learning how to Learn Learning Algorithms: Recursive Self-Improvement
Jürgen Schmidhuber
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Bayesian program learning: Prospects for building more human-like AI systems
Joshua Tenenbaum & Kevin Ellis
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Learning When to Halt With Adaptive Computation Time
Alex Graves
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(aka Autodiff Workshop aka Automatic Differentiation)
Alex Wiltschko · Zach DeVito · Frédéric Bastien · Pascal Lamblin
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Automatic Differentiation: History and Headroom
Barak A. Pearlmutter
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TensorFlow: Future Directions for Simplifying Large-Scale Machine Learning
Jeff Dean
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No more mini-languages: The power of autodiffing full-featured Python
David Duvenaud
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Credit assignment: beyond backpropagation
Yoshua Bengio
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Autodiff writes your exponential family inference code
Matthew Johnson
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The tension between convenience and performance in automatic differentiation
Jeffrey M. Siskind
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Dylan Hadfield-Menell · Adrian Weller · David Duvenaud · Jacob Steinhardt · Percy S Liang
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Jacob Steinhardt
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Rules for Reliable Machine Learning
Martin A Zinkevich
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What's your ML Test Score? A rubric for ML production systems
Eric Breck, Shanqing Cai, Eric Nielsen, Michael Salib, D. Sculley
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Robust Learning and Inference
Yishay Mansour
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Automated versus do-it-yourself methods for causal inference: Lessons learned from a data analysis competition
Jennifer Hill
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Robust Covariate Shift Classification Using Multiple Feature Views
Anqi Liu, Hong Wang Brian D. Ziebart
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Moses Charikar, Jacob Steinhardt, Gregory Valiant Doug Tygar
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Adversarial Examples and Adversarial Training
Ian Goodfellow
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Summoning Demons: The Pursuit of Exploitable Bugs in Machine Learning
Rock Stevens, Octavian Suciu, Andrew Ruef, Sanghyun Hong, Michael Hicks, Tudor Dumitras
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Learning Reliable Objectives
Anca Dragan
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Building and Validating the AI behind the Next-Generation Aircraft Collision Avoidance System
Mykel J Kochenderfer
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Online Prediction with Selfish Experts
Okke Schrijvers
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TensorFlow Debugger: Debugging Dataflow Graphs for Machine Learning
Shanqing Cai, Eric Breck, Eric Nielsen, Michael Salib, D. Sculley
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Tomas Mikolov · Baroni Marco · Armand Joulin · Germán Kruszewski · Angeliki Lazaridou · Klemen Simonic
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A roadmap for communication-based AI
Marco Baroni
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The commAI-env environment for communication-based AI
Allan Jabri
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Human-like dialogue: Key challenges for AI
Raquel Fernandez
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Learning incrementally to become a general problem solver
Jürgen Schmidhuber
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From particular to general: A preliminary case study of transfer learning in reading comprehension
Rudolf Kadlec, Ondrej Bajgar, Jan Kleindienst
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Consolidating the search for general AI
Marek Rosa, Jan Feyereisl
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Gaining insights from game theory about the emergence of communication
Alex Peysakhovich
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Socially constructed machine intelligence
Tomo Lazovich, Matthew C. Graham, Troy M. Lau, Joshua C. Poore
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Virtual embodiment: A scalable long-term strategy for Artificial Intelligence research
Douwe Kiela, Luana Bulat, Anita L. Vero, Stephen Clark
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Building machines that learn and think like people
Brenden Lake
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Malmo: Flexible and scalable evaluation in Minecraft
Fernando Diaz
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A paradigm for situated and goal-driven language learning
Jon Gauthier, Igor Mordatch
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In praise of fake AI
Arthur Szlam
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An evolutionary perspective on machine intelligence
Emmanuel Dupoux
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Julian Togelius
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Minimally naturalistic Artificial Intelligence
Steven Hansen
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Gemma Boleda
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Richard Baraniuk · Jiquan Ngiam · Christoph Studer · Phillip Grimaldi · Andrew Lan
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BLAh: Boolean Logic Analysis for Graded Student Response Data
Phil Grimaldi, OpenStax/Rice University
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Eliminating testing through continuous assessment
Steve Ritter, Carnegie Learning
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Pieter Abbeel, UC Berkeley
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Mihaela van der Schaar, UCLA
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Machine Learning Challenges and Opportunities in MOOCs
Zhenghao Chen, Coursera
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Understanding Engagement and Sentiment in MOOCs using Probabilistic Soft Logic (PSL)
Lise Getoor, UC Santa Cruz
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Kangwook Lee, KAIST
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Using Computational Methods to Improve Feedback for Learners
Anna Rafferty, Carleton College
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Estimating student proficiency: Deep learning is not the panacea
Michael Mozer, CU Boulder
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Modeling skill interactions with multilayer item response functions
Yan Karklin, Knewton
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On Crowdlearning: How do People Learn in the Wild?
Utkarsh Upadhyay, MPI-SWS
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Beyond Assessment Scores: How Behavior Can Give Insight into Knowledge Transfer
Christopher Brinton, Zoomi
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Using Old Data To Yield Better Personalized Tutoring Systems
Emma Brunskill, CMU
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