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Author Information
Ian Goodfellow (OpenAI)
Ian Goodfellow is a research scientist at OpenAI. He obtained a B.Sc. and M.Sc. from Stanford University in 2009. He worked on the Stanford AI Robot and interned at Willow Garage before beginning to study deep learning under the direction of Andrew Ng. He completed a PhD co-supervised by Yoshua Bengio and Aaron Courville in 2014. He invented generative adversarial networks shortly after completing his thesis and shortly before joining Google Brain. At Google, he co-developed an end-to-end deep learning system for recognizing addresses in Street View, studied machine learning security and privacy, and co-authored the MIT Press textbook, Deep Learning. In 2016 he left Google to join OpenAI, a non-profit whose machine is to build safe AI for the benefit of everyone.
Soumith Chintala (Facebook AI Research)
Arthur Gretton (Google Deepmind / UCL)
Arthur Gretton is a Professor with the Gatsby Computational Neuroscience Unit at UCL. He received degrees in Physics and Systems Engineering from the Australian National University, and a PhD with Microsoft Research and the Signal Processing and Communications Laboratory at the University of Cambridge. He previously worked at the MPI for Biological Cybernetics, and at the Machine Learning Department, Carnegie Mellon University. Arthur's recent research interests in machine learning include the design and training of generative models, both implicit (e.g. GANs) and explicit (high/infinite dimensional exponential family models), nonparametric hypothesis testing, and kernel methods. He has been an associate editor at IEEE Transactions on Pattern Analysis and Machine Intelligence from 2009 to 2013, an Action Editor for JMLR since April 2013, an Area Chair for NeurIPS in 2008 and 2009, a Senior Area Chair for NeurIPS in 2018, an Area Chair for ICML in 2011 and 2012, and a member of the COLT Program Committee in 2013. Arthur was program chair for AISTATS in 2016 (with Christian Robert), tutorials chair for ICML 2018 (with Ruslan Salakhutdinov), workshops chair for ICML 2019 (with Honglak Lee), program chair for the Dali workshop in 2019 (with Krikamol Muandet and Shakir Mohammed), and co-organsier of the Machine Learning Summer School 2019 in London (with Marc Deisenroth).
Sebastian Nowozin (DeepMind)
Aaron Courville (Mila, U. Montreal)
Yann LeCun (Facebook)
Yann LeCun is Director of AI Research at Facebook, and Silver Professor of Data Science, Computer Science, Neural Science, and Electrical Engineering at New York University. He received the Electrical Engineer Diploma from ESIEE, Paris in 1983, and a PhD in Computer Science from Université Pierre et Marie Curie (Paris) in 1987. After a postdoc at the University of Toronto, he joined AT&T Bell Laboratories in Holmdel, NJ in 1988. He became head of the Image Processing Research Department at AT&T Labs-Research in 1996, and joined NYU as a professor in 2003, after a brief period as a Fellow of the NEC Research Institute in Princeton. From 2012 to 2014 he directed NYU's initiative in data science and became the founding director of the NYU Center for Data Science. He was named Director of AI Research at Facebook in late 2013 and retains a part-time position on the NYU faculty. His current interests include AI, machine learning, computer perception, mobile robotics, and computational neuroscience. He has published over 180 technical papers and book chapters on these topics as well as on neural networks, handwriting recognition, image processing and compression, and on dedicated circuits for computer perception.
Emily Denton (Google)
Emily Denton is a Research Scientist at Google where they examine the societal impacts of AI technology. Their recent research centers on critically examining the norms, values, and work practices that structure the development and use of machine learning datasets. Prior to joining Google, Emily received their PhD in machine learning from the Courant Institute of Mathematical Sciences at New York University, where they focused on unsupervised learning and generative modeling of images and video.
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2019 : TBD »
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2015 Poster: Character-level Convolutional Networks for Text Classification »
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2015 Poster: Fast Two-Sample Testing with Analytic Representations of Probability Measures »
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2015 Tutorial: Deep Learning »
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2014 Poster: Exploiting Linear Structure Within Convolutional Networks for Efficient Evaluation »
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2014 Poster: A Wild Bootstrap for Degenerate Kernel Tests »
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2014 Oral: A Wild Bootstrap for Degenerate Kernel Tests »
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2014 Poster: Generative Adversarial Nets »
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2013 Workshop: Modern Nonparametric Methods in Machine Learning »
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2013 Poster: B-test: A Non-parametric, Low Variance Kernel Two-sample Test »
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2013 Poster: A Kernel Test for Three-Variable Interactions »
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2013 Oral: A Kernel Test for Three-Variable Interactions »
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2013 Poster: Multi-Prediction Deep Boltzmann Machines »
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2012 Workshop: Confluence between Kernel Methods and Graphical Models »
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2012 Workshop: Modern Nonparametric Methods in Machine Learning »
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2012 Poster: Optimal kernel choice for large-scale two-sample tests »
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