ICML2024

Efficient Algorithms for Sum-Of-Minimum Optimization

Lisang Ding, Ziang Chen, Xinshang Wang, Wotao Yin

7 citations

Abstract

In this work, we propose a novel optimization model termed"sum-of-minimum"optimization. This model seeks to minimize the sum or average of NN objective functions over kk parameters, where each objective takes the minimum value of a predefined sub-function with respect to the kk parameters. This universal framework encompasses numerous clustering applications in machine learning and related fields. We develop efficient algorithms for solving sum-of-minimum optimization problems, inspired by a randomized initialization algorithm for the classic kk-means (Arthur&Vassilvitskii, 2007) and Lloyd's algorithm (Lloyd, 1982). We establish a new tight bound for the generalized initialization algorithm and prove a gradient-descent-like convergence rate for generalized Lloyd's algorithm. The efficiency of our algorithms is numerically examined on multiple tasks, including generalized principal component analysis, mixed linear regression, and small-scale neural network training. Our approach compares favorably to previous ones based on simpler-but-less-precise optimization reformulations.