BOOK-CHAPTER

Measuring Implicit Bias Using SHAP Feature Importance and Fuzzy Cognitive Maps

Isel GrauGonzalo NápolesFabian HoitsmaLisa Koutsoviti KoumeriKoen Vanhoof

Year: 2024 Lecture notes in networks and systems Pages: 745-764   Publisher: Springer International Publishing

Abstract

In this paper, we integrate the concepts of feature importance with implicit bias in the context of pattern classification. This is done by means of a three-step methodology that involves (i) building a classifier and tuning its hyperparameters, (ii) building a Fuzzy Cognitive Map model able to quantify implicit bias, and (iii) using the SHAP feature importance to active the neural concepts when performing simulations. The results using a real case study concerning fairness research support our two-fold hypothesis. On the one hand, it is illustrated the risks of using a feature importance method as an absolute tool to measure implicit bias. On the other hand, it is concluded that the amount of bias towards protected features might differ depending on whether the features are numerically or categorically encoded.

Keywords:
Feature (linguistics) Classifier (UML) Hyperparameter Artificial intelligence Computer science Cognitive bias Fuzzy logic Machine learning Cognition Pattern recognition (psychology) Data mining Psychology

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Citation History

Topics

Cognitive Science and Mapping
Physical Sciences →  Computer Science →  Artificial Intelligence
Explainable Artificial Intelligence (XAI)
Physical Sciences →  Computer Science →  Artificial Intelligence
Ethics and Social Impacts of AI
Social Sciences →  Social Sciences →  Safety Research
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