JOURNAL ARTICLE

Modeling implicit bias with fuzzy cognitive maps

Abstract

This paper presents a Fuzzy Cognitive Map model to quantify implicit bias in structured datasets where features can be numeric or discrete. In our proposal, problem features are mapped to neural concepts that are initially activated by experts when running what-if simulations, whereas weights connecting the neural concepts represent absolute correlation/association patterns between features. In addition, we introduce a new reasoning mechanism equipped with a normalization-like transfer function that prevents neurons from saturating. Another advantage of this new reasoning mechanism is that it can easily be controlled by regulating nonlinearity when updating neurons' activation values in each iteration. Finally, we study the convergence of our model and derive analytical conditions concerning the existence and unicity of fixed-point attractors.

Keywords:
Fuzzy cognitive map Convergence (economics) Fuzzy logic Artificial neural network Mechanism (biology) Cognitive map Nonlinear system Cognition

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Topics

Cognitive Science and Mapping
Physical Sciences →  Computer Science →  Artificial Intelligence
Spatial Cognition and Navigation
Physical Sciences →  Engineering →  Automotive Engineering
Neural Networks and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence

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