TL;DR
This paper introduces a novel method for auditing black-box models to detect indirect feature influence without needing to access or retrain the models, enhancing interpretability and fairness assessments.
Contribution
It presents a new technique for auditing black-box models to identify indirect feature influence without retraining, applicable via API access.
Findings
Effective in detecting indirect influence of features
Works on models accessible only as black boxes
Validated on multiple datasets and models
Abstract
Data-trained predictive models see widespread use, but for the most part they are used as black boxes which output a prediction or score. It is therefore hard to acquire a deeper understanding of model behavior, and in particular how different features influence the model prediction. This is important when interpreting the behavior of complex models, or asserting that certain problematic attributes (like race or gender) are not unduly influencing decisions. In this paper, we present a technique for auditing black-box models, which lets us study the extent to which existing models take advantage of particular features in the dataset, without knowing how the models work. Our work focuses on the problem of indirect influence: how some features might indirectly influence outcomes via other, related features. As a result, we can find attribute influences even in cases where, upon further…
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