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Department of Mathematics,
University of California San Diego

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Center for Computational Mathematics Seminar

Linghao Zhang

UCSD

A Characterization for Tightness of the Sparse Moment-SOS Hierarchy

Abstract:

This research project studies the sparse Moment-SOS hierarchy of relaxations for solving sparse polynomial optimization problems. We show that this sparse hierarchy is tight if and only if the objective can be written as a sum of sparse nonnegative polynomials, each of which belongs to the sum of the ideal and quadratic module generated by the corresponding sparse constraints. Based on this characterization, we give several sufficient conditions for the sparse Moment-SOS hierarchy to be tight. In particular, we show that this sparse hierarchy is tight under some assumptions such as convexity, optimality conditions or finiteness of constraining sets.

CCoM

October 15, 2024

11:00 AM

AP&M 2402 & Zoom ID 921 2618 5194

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