Composable Coresets for Constrained Determinant Maximization and Beyond
Sepideh Mahabadi, Thuy-Duong Vuong

TL;DR
This paper develops new composable coreset algorithms for determinant maximization under various constraints, improving efficiency and extending applicability to broader settings in data summarization and experimental design.
Contribution
It introduces optimal-size, approximation-guaranteed composable coresets for constrained determinant maximization, including partition and laminar matroid constraints, and enhances algorithm runtime.
Findings
Achieves a size-$kd$ coreset with optimal approximation for $k>d$
Constructs a simple optimal coreset for $k \\leq d$
Improves local search algorithm runtime to linear in $n$
Abstract
We study algorithms for construction of composable coresets for the task of Determinant Maximization under partition constraint. Given a point set that is partitioned into groups , and integers , where , the goal is to pick points from group such that the overall determinant of the picked points is maximized. Determinant Maximization and its constrained variants have gained a lot of interest for modeling diversity, and have found applications in the context of data summarization. When the cardinality of the selected set is greater than the dimension , we show a peeling algorithm that gives us a composable coreset of size with a provably optimal approximation factor of When , we show a simple coreset construction with optimal size and approximation factor. As a…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Complexity and Algorithms in Graphs · Data Management and Algorithms
