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arxiv: 1911.02455 · v1 · pith:NEMYVTYK · submitted 2019-11-06 · cs.LG · cs.CY· cs.HC· stat.ML

Unfairness towards subjective opinions in Machine Learning

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classification cs.LG cs.CYcs.HCstat.ML
keywords unfairnesslearningmachineopinionsacademiaadaptationaddressedapplication
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Despite the high interest for Machine Learning (ML) in academia and industry, many issues related to the application of ML to real-life problems are yet to be addressed. Here we put forward one limitation which arises from a lack of adaptation of ML models and datasets to specific applications. We formalise a new notion of unfairness as exclusion of opinions. We propose ways to quantify this unfairness, and aid understanding its causes through visualisation. These insights into the functioning of ML-based systems hint at methods to mitigate unfairness.

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