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Biostatistics & AMS Seminar: A Martingale Theory of Evidence

Department and Center Event
Monday, October 7, 2024, 12:05 p.m. - 1:00 p.m. ET
Location
Wolfe Street Building/W3030
Hybrid
Past Event

Biostatistics and Applied Mathematics & Statistics Joint Seminar

Title: A martingale theory of evidence 

Abstract: This talk will describe an approach towards testing hypotheses and estimating functionals that is based on games. In short, to test a (possibly composite, nonparametric) hypothesis, we set up a game in which no betting strategy can make money under the null (the wealth is an "e-process" under the null). But if the null is false, then smart betting strategies will have exponentially increasing wealth. Thus, hypotheses are rewritten as constraints in games, the statistician is a gambler, test statistics are betting strategies, and the wealth obtained is directly a measure of evidence which is valid at any data-dependent stopping time (an e-value). The optimal betting strategies are typically Bayesian, but the guarantees are frequentist. This "game perspective" provides new statistically and computationally efficient solutions to many modern problems, like nonparametric independence or two-sample testing by betting, estimating means of bounded random variables, testing exchangeability, and so forth. The talk will summarize some recent work from the references at the end of these slides.

Speakers

Aaditya Ramdas

Aaditya Ramdas is an Associate Professor in the Department of Statistics and Data Science and the Machine Learning Department at Carnegie Mellon University, as well as a visiting academic at Amazon Research. Aaditya received the Sloan fellowship in mathematics, the IMS Peter Gavin Hall Early Career Prize, the inaugural COPSS Emerging Leader Award, the Bernoulli New Researcher Award, the NSF CAREER Award, faculty research awards from Google and Adobe, and the Umesh K. Gavasker thesis award for his PhD. His research in mathematical statistics and learning focuses on designing algorithms that both have strong theoretical guarantees and also work well in practice. Key areas of interest include post-selection inference, game-theoretic statistics and predictive uncertainty quantification.

Zoom Registration

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2023-2024 Monday Seminar Series

All seminars are held at 12:05 PM via Zoom and onsite. View all seminar information here.