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Worst-Case Risk Quantification under Distributional Ambiguity using Kernel Mean Embedding in Moment Problem

31 March 2020
Jia Jie Zhu
Wittawat Jitkrittum
Moritz Diehl
Bernhard Schölkopf
ArXiv (abs)PDFHTML
Abstract

In order to anticipate rare and impactful events, we propose to quantify the worst-case risk under distributional ambiguity using a recent development in kernel methods -- the kernel mean embedding. Specifically, we formulate the generalized moment problem whose ambiguity set (i.e., the moment constraint) is described by constraints in the associated reproducing kernel Hilbert space in a nonparametric manner. We then present the tractable approximation and its theoretical justification. As a concrete application, we numerically test the proposed method in characterizing the worst-case constraint violation probability in the context of a constrained stochastic control system.

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