Composable Core-sets for Determinant Maximization: A Simple Near-Optimal Algorithm
Abstract
``Composable core-sets'' are an efficient framework for solving optimization problems in massive data models. In this work, we consider efficient construction of composable core-sets for the determinant maximization problem. This can also be cast as the MAP inference task for determinantal point processes, that have recently gained a lot of interest for modeling diversity and fairness. The problem was recently studied in [IMOR'18], where they designed composable core-sets with the optimal approximation bound of . On the other hand, the more practical Greedy algorithm has been previously used in similar contexts. In this work, first we provide a theoretical approximation guarantee of for the Greedy algorithm in the context of composable core-sets; Further, we propose to use a Local Search based algorithm that while being still practical, achieves a nearly optimal approximation bound of ; Finally, we implement all three algorithms and show the effectiveness of our proposed algorithm on standard data sets.
Cite
@article{arxiv.1907.03197,
title = {Composable Core-sets for Determinant Maximization: A Simple Near-Optimal Algorithm},
author = {Piotr Indyk and Sepideh Mahabadi and Shayan Oveis Gharan and Alireza Rezaei},
journal= {arXiv preprint arXiv:1907.03197},
year = {2019}
}
Comments
This paper has appeared in the 36th International Conference on Machine Learning (ICML), 2019. This is an equal contribution paper