Counterfactual Situation Testing: From Single to Multidimensional Discrimination
Jose M. Alvarez, Salvatore Ruggieri

TL;DR
This paper introduces counterfactual situation testing (CST), a causal framework for detecting individual discrimination in classifier decisions by comparing individuals' outcomes under counterfactual protected attribute changes, extending traditional situation testing.
Contribution
CST operationalizes fairness via counterfactual reasoning, enabling detection of single and multidimensional discrimination, including intersectional cases, with higher sensitivity than existing methods.
Findings
CST uncovers more discrimination cases than traditional situation testing.
CST extends counterfactual fairness by adding confidence intervals.
Experimental results validate CST on synthetic and real datasets.
Abstract
We present counterfactual situation testing (CST), a causal data mining framework for detecting individual discrimination in a dataset of classifier decisions. CST answers the question ``what would have been the model outcome had the individual, or complainant, been of a different protected status?'' It extends the legally-grounded situation testing (ST) of Thanh et al. (2011) by operationalizing the notion of "fairness given the difference" via counterfactual reasoning. ST finds for each complainant similar protected and non-protected instances in the dataset; constructs, respectively, a control and test group; and compares the groups such that a difference in model outcomes implies a potential case of individual discrimination. CST, instead, avoids this idealized comparison by establishing the test group on the complainant's generated counterfactual, which reflects how the protected…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Anomaly Detection Techniques and Applications · Fault Detection and Control Systems
