State of the Art in Fair ML: From Moral Philosophy and Legislation to Fair Classifiers
Machine learning is becoming an ever present part in our lives as many decisions, e.g. to lend a credit, are no longer made by humans but by machine learning algorithms. However those decisions are often unfair and discriminating individuals belonging to protected groups based on race or gender. Wit...
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Zusammenfassung: | Machine learning is becoming an ever present part in our lives as many
decisions, e.g. to lend a credit, are no longer made by humans but by machine
learning algorithms. However those decisions are often unfair and
discriminating individuals belonging to protected groups based on race or
gender. With the recent General Data Protection Regulation (GDPR) coming into
effect, new awareness has been raised for such issues and with computer
scientists having such a large impact on peoples lives it is necessary that
actions are taken to discover and prevent discrimination. This work aims to
give an introduction into discrimination, legislative foundations to counter it
and strategies to detect and prevent machine learning algorithms from showing
such behavior. |
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DOI: | 10.48550/arxiv.1811.09539 |