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November 4, 2024
Conference Paper
Title

Perception of biases in machine learning in production research

Title Supplement
A structured literature review dissecting bias categories
Abstract
Factories are evolving into Cyber-Physical Production Systems, producing vast data volumes that can be leveraged using computational power. However, an easy and sorrowless integration of machine learning (ML) can lead to too simplistic or false pattern extraction, i.e. biased ML applications. Especially when trained on big data this poses a significant risk when deploying ML. Research has shown that there are sources for undesired biases among the whole ML life cycle and feedback loop between human, data and the ML model. Methods to detect, mitigate and prevent those undesired biases in order to achieve "fair" ML solutions have been developed and established in tool boxes in the past years. In this article, we utilize a structured literature review to address the underappreciated biases in ML for production application and highlight the ambiguity of the term bias. It emphasizes the necessity for research on ML biases in production and shows off the most relevant blind spots so far. Filling those blind spots with research and guidelines to incorporate bias screening, treatment and risk assessment in the ML life cycle of industrial applications promises to enhance their robustness, resilience and trustworthiness.
Author(s)
Götte, Gesa Marie
Fraunhofer-Institut für Fabrikbetrieb und -automatisierung IFF  
Antons, Oliver
Herzog, Andreas  
Fraunhofer-Institut für Fabrikbetrieb und -automatisierung IFF  
Arlinghaus, Julia C.
Mainwork
Workshop Proceedings AI in Production 2024  
Conference
German Conference on Artificial Intelligence 2024  
Open Access
DOI
10.33968/2024.78
Additional full text version
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Language
English
Fraunhofer-Institut für Fabrikbetrieb und -automatisierung IFF  
Fraunhofer Group
Fraunhofer-Verbund Produktion  
Keyword(s)
  • Responsible AI

  • Fair AI

  • Produktion

  • Bias

  • Bias in ML

  • AI in Production

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