The Fair Game: Auditing & Debiasing AI Algorithms Over Time
Debabrota Basu, Udvas Das

TL;DR
This paper introduces 'Fair Game', a dynamic, reinforcement learning-based framework that audits and debiases AI algorithms over time, adapting to societal changes and evolving fairness standards.
Contribution
It proposes a novel RL-driven loop with an auditor and debiasing component to adapt fairness in ML algorithms dynamically over time.
Findings
Framework effectively adapts fairness goals over time
Demonstrates improved fairness in ML predictions
Simulates societal evolution of ethical standards
Abstract
An emerging field of AI, namely Fair Machine Learning (ML), aims to quantify different types of bias (also known as unfairness) exhibited in the predictions of ML algorithms, and to design new algorithms to mitigate them. Often, the definitions of bias used in the literature are observational, i.e. they use the input and output of a pre-trained algorithm to quantify a bias under concern. In reality,these definitions are often conflicting in nature and can only be deployed if either the ground truth is known or only in retrospect after deploying the algorithm. Thus,there is a gap between what we want Fair ML to achieve and what it does in a dynamic social environment. Hence, we propose an alternative dynamic mechanism,"Fair Game",to assure fairness in the predictions of an ML algorithm and to adapt its predictions as the society interacts with the algorithm over time. "Fair Game" puts…
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