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A list of resources for all invited talks, tutorials, workshops and presentations at NIPS 2016

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NIPS 2016

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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Contents

Invited Talks

Tutorials

Workshops

  • David Lopez-Paz · Leon Bottou · Alec Radford

  • David Silver · Satinder Singh · Pieter Abbeel · Xi Chen

    • Learning representations by stochastic gradient descent in cross-validation error

      Rich Sutton

    • The Nuts and Bolts of Deep Reinforcement Learning Research

      John Schulman

    • Learning to navigate

      Raia Hadsell

    • Challenges for human-level learning in Deep RL

      Josh Tenenbaum

    • Task Generalization via Deep Reinforcement Learning

      Junhyuk Oh

  • Matko Bošnjak · Nando de Freitas · Tejas D Kulkarni · Arvind Neelakantan · Scott E Reed · Sebastian Riedel · Tim Rocktäschel

    • What use is Abstraction in Deep Program Induction?

      Stephen Muggleton

    • In Search of Strong Generalization: Building Structured Models in the Age of Neural Networks

      Daniel Tarlow

    • Learning Program Representation: Symbols to Semantics

      Charles Sutton

    • From temporal abstraction to programs

      Doina Precup

    • Learning to Compose by Delegation

      Rob Fergus

    • How Can We Write Large Programs without Thinking?

      Percy Liang

    • Program Synthesis and Machine Learning

      Martin Vechev

    • Limitations of RNNs: a computational perspective

      Ed Grefenstette

    • Learning how to Learn Learning Algorithms: Recursive Self-Improvement

      Jürgen Schmidhuber

    • Bayesian program learning: Prospects for building more human-like AI systems

      Joshua Tenenbaum & Kevin Ellis

    • Learning When to Halt With Adaptive Computation Time

      Alex Graves

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A list of resources for all invited talks, tutorials, workshops and presentations at NIPS 2016

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