Recycling Privileged Learning and Distribution Matching for Fairness
Quadrianto, Novi, Sharmanska, Viktoriia
–Neural Information Processing Systems
Equipping machine learning models with ethical and legal constraints is a serious issue; without this, the future of machine learning is at risk. This paper takes a step forward in this direction and focuses on ensuring machine learning models deliver fair decisions. In legal scholarships, the notion of fairness itself is evolving and multi-faceted. We set an overarching goal to develop a unified machine learning framework that is able to handle any definitions of fairness, their combinations, and also new definitions that might be stipulated in the future. To achieve our goal, we recycle two well-established machine learning techniques, privileged learning and distribution matching, and harmonize them for satisfying multi-faceted fairness definitions.
Neural Information Processing Systems
Feb-14-2020, 06:10:21 GMT
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