2023
DOI: 10.48550/arxiv.2302.09911
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Fair $k$-Center: a Coreset Approach in Low Dimensions

Abstract: Center-based clustering techniques are fundamental in some areas of machine learning such as data summarization. Generic k-center algorithms can produce biased cluster representatives so there has been a recent interest in fair k-center clustering. Our main theoretical contributions are two new (3 + )-approximation algorithms for solving the fair k-center problem in (1) the dynamic incremental, i.e., one-pass streaming, model and (2) the MapReduce model. Our dynamic incremental algorithm is the first such algo… Show more

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