2023
DOI: 10.48550/arxiv.2302.02306
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Fair Spatial Indexing: A paradigm for Group Spatial Fairness

Abstract: Machine learning (ML) is playing an increasing role in decisionmaking tasks that directly affect individuals, e.g., loan approvals, or job applicant screening. Significant concerns arise that, without special provisions, individuals from under-privileged backgrounds may not get equitable access to services and opportunities. Existing research studies fairness with respect to protected attributes such as gender, race or income, but the impact of location data on fairness has been largely overlooked. With the wi… Show more

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