Legend: Palais des congrès de Montréal = CC, Le Westin Montréal = W, Intercontinental Montréal = I
A * preceding a session name means that the session is an applied session.
A ! preceding a session name means that the session reflects the JSM meeting theme.
A * preceding a session name means that the session is an applied session.
A ! preceding a session name means that the session reflects the JSM meeting theme.
Activity Details
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328 * ! | Tue, 8/6/2013, 10:30 AM - 12:20 PM | CC-516d | |
The Secret Weapon of the Dark Knight Against the Joker: Statistical Methods for Big and Massive Data Sets — Invited Papers | |||
Section on Statistical Computing , SSC , Statistical Learning and Data Mining Section | |||
Organizer(s): Xingye Qiao, Binghamton University, Lingsong Zhang, Purdue University | |||
Chair(s): Xingye Qiao, Binghamton University | |||
10:35 AM | Modeling Visual Cortex V4 in Naturalistic Conditions with Invariant and Sparse Image Representations — Bin Yu, Univ of California at Berkeley ; Julien Mairal, Inria, Grunobel ; Yuval Benjamini, UC Berkeley, Statistics ; Michael Oliver, UC Berkeley, Neuroscience ; Ben Willmore, Oxfored, Neuroscience ; Jack Gallant, UC Berkeley, Neuroscience | ||
11:00 AM | Recent Research on Deep Learning for AI — Yoshua Bengio, U. Montreal | ||
11:25 AM | Big Data Meets Human Understanding : Interpretability in Predictive Modeling with the Bayesian List Machine — Benjamin Letham, MIT ; Cynthia Rudin, Massachusetts Institute of Technology ; Tyler H. McCormick, University of Washington, Seattle ; David Madigan, Columbia University | ||
11:50 AM | Bayesian Manifold Learning — David B. Dunson, Duke University | ||
12:15 PM | Floor Discussion |
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