2022
DOI: 10.48550/arxiv.2202.07349
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IF-City: Intelligible Fair City Planning to Measure, Explain and Mitigate Inequality

Abstract: With the increasing pervasiveness of Artificial Intelligence (AI), many visual analytics tools have been proposed to examine fairness, but they mostly focus on data scientist users. Instead, tackling fairness must be inclusive and involve domain experts with specialized tools and workflows. Thus, domain-specific visualizations are needed for algorithmic fairness. Furthermore, while much work on AI fairness has focused on predictive decisions, less has been done for fair allocation and planning, which require h… Show more

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