Impossibility results for fair representations
Tosca Lechner, Shai Ben-David, Sushant Agarwal, Nivasini, Ananthakrishnan

TL;DR
This paper proves fundamental impossibility results showing that no data representation can universally guarantee fairness across different tasks and distributions, challenging recent optimistic claims in fair ML research.
Contribution
It establishes formal impossibility theorems demonstrating the limitations of fair data representations in ensuring fairness across tasks and distribution shifts.
Findings
No representation guarantees fairness for different tasks.
Fairness guarantees fail under distribution shifts.
Refined fairness notions like Odds Equality cannot be universally enforced.
Abstract
With the growing awareness to fairness in machine learning and the realization of the central role that data representation has in data processing tasks, there is an obvious interest in notions of fair data representations. The goal of such representations is that a model trained on data under the representation (e.g., a classifier) will be guaranteed to respect some fairness constraints. Such representations are useful when they can be fixed for training models on various different tasks and also when they serve as data filtering between the raw data (known to the representation designer) and potentially malicious agents that use the data under the representation to learn predictive models and make decisions. A long list of recent research papers strive to provide tools for achieving these goals. However, we prove that this is basically a futile effort. Roughly stated, we prove…
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Taxonomy
TopicsEthics and Social Impacts of AI · Privacy-Preserving Technologies in Data · Adversarial Robustness in Machine Learning
