Fairpriori: Improving Biased Subgroup Discovery for Deep Neural Network Fairness
Kacy Zhou, Jiawen Wen, Nan Yang, Dong Yuan, Qinghua Lu, Huaming Chen

TL;DR
Fairpriori is a new method that improves the detection of intersectional bias in deep neural networks by being faster, more effective, and easier to interpret than existing tools, supporting multiple fairness metrics.
Contribution
Introduces Fairpriori, a novel biased subgroup discovery method that enhances intersectional bias detection with improved efficiency, usability, and support for multiple fairness metrics.
Findings
Outperforms state-of-the-art methods in effectiveness and efficiency
Supports multiple fairness metrics for comprehensive bias analysis
Is easier to interpret and use in real-world scenarios
Abstract
While deep learning has become a core functional module of most software systems, concerns regarding the fairness of ML predictions have emerged as a significant issue that affects prediction results due to discrimination. Intersectional bias, which disproportionately affects members of subgroups, is a prime example of this. For instance, a machine learning model might exhibit bias against darker-skinned women, while not showing bias against individuals with darker skin or women. This problem calls for effective fairness testing before the deployment of such deep learning models in real-world scenarios. However, research into detecting such bias is currently limited compared to research on individual and group fairness. Existing tools to investigate intersectional bias lack important features such as support for multiple fairness metrics, fast and efficient computation, and…
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Taxonomy
TopicsEthics and Social Impacts of AI · Impact of AI and Big Data on Business and Society
