Proportionally fair clustering
Publication
, Journal Article
Chen, X; Fain, B; Lyu, L; Munagala, K
Published in: 36th International Conference on Machine Learning Icml 2019
January 1, 2019
We extend the fair machine learning literature by considering the problem of proportional centroid clustering in a metric context. For clustering n points with k centers, we define fairness as proportionality to mean that any n/k points are entitled to form their own cluster if there is another center that is closer in distance for all n/k points. We seek clustering solutions to which there are no such justified complaints from any subsets of agents, without assuming any a priori notion of protected subsets. We present and analyze algorithms to efficiently compute, optimize, and audit proportional solutions. We conclude with an empirical examination of the tradeoff between proportional solutions and the k-means objective.
Duke Scholars
Published In
36th International Conference on Machine Learning Icml 2019
Publication Date
January 1, 2019
Volume
2019-June
Start / End Page
1782 / 1791
Citation
APA
Chicago
ICMJE
MLA
NLM
Chen, X., Fain, B., Lyu, L., & Munagala, K. (2019). Proportionally fair clustering. 36th International Conference on Machine Learning Icml 2019, 2019-June, 1782–1791.
Chen, X., B. Fain, L. Lyu, and K. Munagala. “Proportionally fair clustering.” 36th International Conference on Machine Learning Icml 2019 2019-June (January 1, 2019): 1782–91.
Chen X, Fain B, Lyu L, Munagala K. Proportionally fair clustering. 36th International Conference on Machine Learning Icml 2019. 2019 Jan 1;2019-June:1782–91.
Chen, X., et al. “Proportionally fair clustering.” 36th International Conference on Machine Learning Icml 2019, vol. 2019-June, Jan. 2019, pp. 1782–91.
Chen X, Fain B, Lyu L, Munagala K. Proportionally fair clustering. 36th International Conference on Machine Learning Icml 2019. 2019 Jan 1;2019-June:1782–1791.
Published In
36th International Conference on Machine Learning Icml 2019
Publication Date
January 1, 2019
Volume
2019-June
Start / End Page
1782 / 1791