Fairness in KI-Systemen
Janine Strotherm, Alissa M\"uller, Barbara Hammer, Benjamin, Paa{\ss}en

TL;DR
This paper introduces fairness in machine learning, explaining key definitions and strategies with visual examples, emphasizing interdisciplinary understanding without heavy mathematical detail.
Contribution
It provides an accessible overview of fairness research in ML, focusing on definitions, strategies, and European context for a broad audience.
Findings
Different fairness definitions and their implications
Strategies for achieving fairness in ML systems
European research context on fairness
Abstract
The more AI-assisted decisions affect people's lives, the more important the fairness of such decisions becomes. In this chapter, we provide an introduction to research on fairness in machine learning. We explain the main fairness definitions and strategies for achieving fairness using concrete examples and place fairness research in the European context. Our contribution is aimed at an interdisciplinary audience and therefore avoids mathematical formulation but emphasizes visualizations and examples. -- Je mehr KI-gest\"utzte Entscheidungen das Leben von Menschen betreffen, desto wichtiger ist die Fairness solcher Entscheidungen. In diesem Kapitel geben wir eine Einf\"uhrung in die Forschung zu Fairness im maschinellen Lernen. Wir erkl\"aren die wesentlichen Fairness-Definitionen und Strategien zur Erreichung von Fairness anhand konkreter Beispiele und ordnen die Fairness-Forschung…
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Taxonomy
TopicsEthics and Social Impacts of AI · Explainable Artificial Intelligence (XAI) · Digital Innovation in Industries
