Can geodemographic clustering be fair? Incorporating social fairness in crisp and fuzzy approaches through a unified framework
收藏DataCite Commons2025-06-01 更新2025-04-19 收录
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https://figshare.com/articles/dataset/Can_geodemographic_clustering_be_fair_Incorporating_social_fairness_in_crisp_and_fuzzy_approaches_through_a_unified_framework/25719732/2
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Geodemographic analysis involves clustering geographic areas into socio-demographically homogeneous groups. However, most existing methods prioritize overall effectiveness, measured by minimizing total costs, potentially misrepresenting specific subgroups within the data. Despite a growing literature on fair clustering, it focuses almost exclusively on crisp clustering, failing to address the inherent fuzziness of the real world. This study addresses these gaps by introducing a socially-fair geodemographic clustering (SFGC) framework, which modifies the classical fuzzy-c means (FCM) by incorporating a new cost function that, instead of minimizing total costs, minimizes the maximum average cost across all subgroups. SFGC also introduces a gradient descent-based algorithm to optimize this new cost function. In addition, SFGC can be directly adapted to crisp clustering, facilitating practical implementation and comparison of clustering algorithms.
提供机构:
figshare
创建时间:
2024-12-14



