2021
DOI: 10.48550/arxiv.2105.05947
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A new perspective on low-rank optimization

Abstract: A key question in many low-rank problems throughout optimization, machine learning, and statistics is to characterize the convex hulls of simple low-rank sets and judiciously apply these convex hulls to obtain strong yet computationally tractable convex relaxations. We invoke the matrix perspective function -the matrix analog of the perspective function -and characterize explicitly the convex hull of epigraphs of convex quadratic, matrix exponential, and matrix power functions under low-rank constraints. Furth… Show more

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