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Deletion Robust Submodular Maximization over Matroids

31 January 2022
Paul Dutting
Federico Fusco
Silvio Lattanzi
A. Norouzi-Fard
Morteza Zadimoghaddam
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Abstract

Maximizing a monotone submodular function is a fundamental task in machine learning. In this paper, we study the deletion robust version of the problem under the classic matroids constraint. Here the goal is to extract a small size summary of the dataset that contains a high value independent set even after an adversary deleted some elements. We present constant-factor approximation algorithms, whose space complexity depends on the rank kkk of the matroid and the number ddd of deleted elements. In the centralized setting we present a (3.582+O(ε))(3.582+O(\varepsilon))(3.582+O(ε))-approximation algorithm with summary size O(k+dlog⁡kε2)O(k + \frac{d \log k}{\varepsilon^2})O(k+ε2dlogk​). In the streaming setting we provide a (5.582+O(ε))(5.582+O(\varepsilon))(5.582+O(ε))-approximation algorithm with summary size and memory O(k+dlog⁡kε2)O(k + \frac{d \log k}{\varepsilon^2})O(k+ε2dlogk​). We complement our theoretical results with an in-depth experimental analysis showing the effectiveness of our algorithms on real-world datasets.

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