Towards a Theoretical Understanding of Why Local Search Works for Clustering with Fair-Center Representation

Authors

  • Zhen Zhang Hunan University of Technology and Business Xiangjiang Laboratory
  • Junfeng Yang Hunan University of Technology and Business Xiangjiang Laboratory
  • Limei Liu Hunan University of Technology and Business Xiangjiang Laboratory
  • Xuesong Xu Hunan University of Technology and Business Xiangjiang Laboratory
  • Guozhen Rong Changsha University of Science and Technology
  • Qilong Feng Central South University Xiangjiang Laboratory

DOI:

https://doi.org/10.1609/aaai.v38i15.29638

Keywords:

ML: Optimization

Abstract

The representative k-median problem generalizes the classical clustering formulations in that it partitions the data points into several disjoint demographic groups and poses a lower-bound constraint on the number of opened facilities from each group, such that all the groups are fairly represented by the opened facilities. Due to its simplicity, the local-search heuristic that optimizes an initial solution by iteratively swapping at most a constant number of closed facilities for the same number of opened ones (denoted by the O(1)-swap heuristic) has been frequently used in the representative k-median problem. Unfortunately, despite its good performance exhibited in experiments, whether the O(1)-swap heuristic has provable approximation guarantees for the case where the number of groups is more than 2 remains an open question for a long time. As an answer to this question, we show that the O(1)-swap heuristic (1) is guaranteed to yield a constant-factor approximation solution if the number of groups is a constant, and (2) has an unbounded approximation ratio otherwise. Our main technical contribution is a new approach for theoretically analyzing local-search heuristics, which derives the approximation ratio of the O(1)-swap heuristic via linearly combining the increased clustering costs induced by a set of hierarchically organized swaps.

Published

2024-03-24

How to Cite

Zhang, Z., Yang, J., Liu, L., Xu, X., Rong, G., & Feng, Q. (2024). Towards a Theoretical Understanding of Why Local Search Works for Clustering with Fair-Center Representation. Proceedings of the AAAI Conference on Artificial Intelligence, 38(15), 16953-16960. https://doi.org/10.1609/aaai.v38i15.29638

Issue

Section

AAAI Technical Track on Machine Learning VI