Matroids, Matchings, And Fairness

22ND INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND STATISTICS, VOL 89(2019)

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摘要
The need for fairness in machine learning algorithms is increasingly critical. A recent focus has been on developing fair versions of classical algorithms, such as those for bandit learning, regression, and clustering. We extend this line of work to include algorithms for optimization subject to one or multiple matroid constraints. We map out this problem space, showing optimal solutions, approximation algorithms, or hardness results depending on the specific problem flavor. Our algorithms are efficient and empirical experiments demonstrate that fairness is achievable without a large compromise to the overall objective.
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