Fairness in Streaming Submodular Maximization: Algorithms and Hardness

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Authors Marwa El Halabi, Slobodan Mitroviฤ‡, Ashkan Norouzi-Fard, Jakab Tardos, Jakub Tarnawski arXiv ID 2010.07431 Category cs.LG: Machine Learning Cross-listed cs.DS Citations 55 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
Submodular maximization has become established as the method of choice for the task of selecting representative and diverse summaries of data. However, if datapoints have sensitive attributes such as gender or age, such machine learning algorithms, left unchecked, are known to exhibit bias: under- or over-representation of particular groups. This has made the design of fair machine learning algorithms increasingly important. In this work we address the question: Is it possible to create fair summaries for massive datasets? To this end, we develop the first streaming approximation algorithms for submodular maximization under fairness constraints, for both monotone and non-monotone functions. We validate our findings empirically on exemplar-based clustering, movie recommendation, DPP-based summarization, and maximum coverage in social networks, showing that fairness constraints do not significantly impact utility.
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