2022
DOI: 10.29220/csam.2022.29.2.251
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Learning fair prediction models with an imputed sensitive variable: Empirical studies

Abstract: As AI has a wide range of influence on human social life, issues of transparency and ethics of AI are emerging. In particular, it is widely known that due to the existence of historical bias in data against ethics or regulatory frameworks for fairness, trained AI models based on such biased data could also impose bias or unfairness against a certain sensitive group (e.g., non-white, women). Demographic disparities due to AI, which refer to socially unacceptable bias that an AI model favors certain groups (e.g.… Show more

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