COOKIES: By using this website you agree that we can place Google Analytics Cookies on your device for performance monitoring. |
University of Cambridge > Talks.cam > Statistics > Minimum L1-norm interpolators: Precise asymptotics and multiple descent
Minimum L1-norm interpolators: Precise asymptotics and multiple descentAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact Qingyuan Zhao. This talk has been canceled/deleted An evolving line of machine learning works observes empirical evidence that suggests interpolating estimators— We observe, and provide rigorous theoretical justification for, a curious multi-descent phenomenon; that is, the generalization risk of the minimum L1-norm interpolator undergoes multiple (and possibly more than two) phases of descent and ascent as one increases the model capacity. This phenomenon stems from the special structure of the minimum L1-norm interpolator as well as the delicate interplay between the over-parameterized ratio and the sparsity, thus unveiling a fundamental distinction in geometry from the minimum L2-norm interpolator. Our finding is built upon an exact characterization of the risk behavior, which is governed by a system of two non-linear equations with two unknowns. This talk is part of the Statistics series. This talk is included in these lists:This talk is not included in any other list Note that ex-directory lists are not shown. |
Other listsBetty & Gordon Moore Library Events Postdoc Career Workshops Russia and the West: Causes of ConfrontationOther talksAdapting the Fokas transform method to solve certain fractional PDEs Poster Prize and Final Remarks The Overlooked Perspectives of Environmental and Population Health Studies: A Balance between Data and Science All Participant Catch Up (Zoom) Statistical Aspects of the Non-Abelian X-Ray Transform |