Visus is an interactive system for curating AutoML-generated ML pipelines, supported by a design framework and user testing with domain experts.
A survey on measuring indirect discrimination in machine learning
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abstract
Nowadays, many decisions are made using predictive models built on historical data.Predictive models may systematically discriminate groups of people even if the computing process is fair and well-intentioned. Discrimination-aware data mining studies how to make predictive models free from discrimination, when historical data, on which they are built, may be biased, incomplete, or even contain past discriminatory decisions. Discrimination refers to disadvantageous treatment of a person based on belonging to a category rather than on individual merit. In this survey we review and organize various discrimination measures that have been used for measuring discrimination in data, as well as in evaluating performance of discrimination-aware predictive models. We also discuss related measures from other disciplines, which have not been used for measuring discrimination, but potentially could be suitable for this purpose. We computationally analyze properties of selected measures. We also review and discuss measuring procedures, and present recommendations for practitioners. The primary target audience is data mining, machine learning, pattern recognition, statistical modeling researchers developing new methods for non-discriminatory predictive modeling. In addition, practitioners and policy makers would use the survey for diagnosing potential discrimination by predictive models.
fields
cs.LG 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Visus: An Interactive System for Automatic Machine Learning Model Building and Curation
Visus is an interactive system for curating AutoML-generated ML pipelines, supported by a design framework and user testing with domain experts.