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Achieving non-discrimination in data release

Authors :
Zhang, Lu
Wu, Yongkai
Wu, Xintao
Zhang, Lu
Wu, Yongkai
Wu, Xintao
Publication Year :
2016

Abstract

Discrimination discovery and prevention/removal are increasingly important tasks in data mining. Discrimination discovery aims to unveil discriminatory practices on the protected attribute (e.g., gender) by analyzing the dataset of historical decision records, and discrimination prevention aims to remove discrimination by modifying the biased data before conducting predictive analysis. In this paper, we show that the key to discrimination discovery and prevention is to find the meaningful partitions that can be used to provide quantitative evidences for the judgment of discrimination. With the support of the causal graph, we present a graphical condition for identifying a meaningful partition. Based on that, we develop a simple criterion for the claim of non-discrimination, and propose discrimination removal algorithms which accurately remove discrimination while retaining good data utility. Experiments using real datasets show the effectiveness of our approaches.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1106251765
Document Type :
Electronic Resource