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Stochastics and Statistics Seminar Morgane Austern (Harvard University)

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Stochastics and Statistics Seminar Cynthia Rush (Columbia University)

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Stochastics and Statistics Seminar Pragya Sur (Harvard University)

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Stochastics and Statistics Seminar Jesse Thaler (MIT)

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Asymptotics of learning on dependent and structured random objects

Morgane Austern (Harvard University)
E18-304

Abstract:  Classical statistical inference relies on numerous tools from probability theory to study the properties of estimators. However, these same tools are often inadequate to study modern machine problems that frequently involve structured data (e.g networks) or complicated dependence structures (e.g dependent random matrices). In this talk, we extend universal limit theorems beyond the classical…

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Characterizing the Type 1-Type 2 Error Trade-off for SLOPE

Cynthia Rush (Columbia University)
E18-304

Abstract:  Sorted L1 regularization has been incorporated into many methods for solving high-dimensional statistical estimation problems, including the SLOPE estimator in linear regression. In this talk, we study how this relatively new regularization technique improves variable selection by characterizing the optimal SLOPE trade-off between the false discovery proportion (FDP) and true positive proportion (TPP) or,…

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Precise high-dimensional asymptotics for AdaBoost via max-margins & min-norm interpolants

Pragya Sur (Harvard University)
E18-304

Abstract: This talk will introduce a precise high-dimensional asymptotic theory for AdaBoost on separable data, taking both statistical and computational perspectives. We will consider the common modern setting where the number of features p and the sample size n are both large and comparable, and in particular, look at scenarios where the data is asymptotically…

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The Geometry of Particle Collisions: Hidden in Plain Sight

Jesse Thaler (MIT)
E18-304

Abstract: Since the 1960s, particle physicists have developed a variety of data analysis strategies for the goal of comparing experimental measurements to theoretical predictions.  Despite their numerous successes, these techniques can seem esoteric and ad hoc, even to practitioners in the field.  In this talk, I explain how many particle physics analysis tools have a…

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