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Statistics and Data Science Seminar Series Aaditya Ramdas (Carnegie Mellon University)

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Statistics and Data Science Seminar Series Dylan Foster (MIT)

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Statistics and Data Science Seminar Series Chao Gao

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Exponential line-crossing inequalities

Aaditya Ramdas (Carnegie Mellon University)
E18-304

Abstract: This talk will present a class of exponential bounds for the probability that a martingale sequence crosses a time-dependent linear threshold. Our key insight is that it is both natural and fruitful to formulate exponential concentration inequalities in this way. We will illustrate this point by presenting a single assumption and a single theorem…

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Stochastics and Statistics Seminar Series

Dylan Foster (MIT)
E18-304

Logistic regression is a fundamental task in machine learning and statistics. For the simple case of linear models, Hazan et al. (2014) showed that any logistic regression algorithm that estimates model weights from samples must exhibit exponential dependence on the weight magnitude. As an alternative, we explore a counterintuitive technique called improper learning, whereby one…

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Robust Estimation: Optimal Rates, Computation and Adaptation

Chao Gao (University of Chicago)
E18-304

Abstract: Chao Gao will discuss the problem of statistical estimation with contaminated data. In the first part of the talk, I will discuss depth-based approaches that achieve minimax rates in various problems. In general, the minimax rate of a given problem with contamination consists of two terms: the statistical complexity without contamination, and the contamination…

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Massachusetts Institute of Technology
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