A New Notion of Individually Fair Clustering: -Equitable -Center

Clustering is a fundamental problem in unsupervised machine learning, and fair variants of it have recently received significant attention due to its societal implications. In this work we introduce a novel definition of individual fairness for clustering problems. Specifically, in our model, each point has a set of other points that it perceives as similar to itself, and it feels that it is fairly treated if the quality of service it receives in the solution is -close (in a multiplicative sense, for a given ) to that of the points in . We begin our study by answering questions regarding the structure of the problem, namely for what values of the problem is well-defined, and what the behavior of the \emph{Price of Fairness (PoF)} for it is. For the well-defined region of , we provide efficient and easily-implementable approximation algorithms for the -center objective, which in certain cases enjoy bounded-PoF guarantees. We finally complement our analysis by an extensive suite of experiments that validates the effectiveness of our theoretical results.
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