Fast Local Search Algorithms for Clustering with Adaptive Sampling and Bandit Strategies
–Neural Information Processing Systems
Local search is a powerful clustering technique that provides high-quality solutions with theoretical guarantees. With distance-based sampling strategies, local search methods can achieve constant approximations for clustering with linear running time in data size. Despite their effectiveness, existing algorithms still face scalability issues as they require scanning the entire dataset for iterative center swaps. This typically leads to an O(ndk) running time, where n is the data size, d is the dimension, k is the number of clusters. To further improve the efficiency of local search algorithms, we propose new methods based on adaptive sampling and bandit strategies.
Neural Information Processing Systems
Jun-12-2026, 00:58:44 GMT
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