A Conceptual Framework for Ethical Evaluation of Machine Learning Systems
Neha R. Gupta, Jessica Hullman, Hari Subramonyam

TL;DR
This paper introduces a utility framework to systematically evaluate ethical considerations in machine learning system assessments, emphasizing trade-offs between information gain and ethical harms.
Contribution
It presents a novel conceptual framework for understanding and managing ethical trade-offs in ML evaluation processes, inspired by practices in other domains.
Findings
Highlights ethical trade-offs in ML evaluation
Proposes a utility framework for balancing information and harms
Suggests best practices from clinical trials and crash testing
Abstract
Research in Responsible AI has developed a range of principles and practices to ensure that machine learning systems are used in a manner that is ethical and aligned with human values. However, a critical yet often neglected aspect of ethical ML is the ethical implications that appear when designing evaluations of ML systems. For instance, teams may have to balance a trade-off between highly informative tests to ensure downstream product safety, with potential fairness harms inherent to the implemented testing procedures. We conceptualize ethics-related concerns in standard ML evaluation techniques. Specifically, we present a utility framework, characterizing the key trade-off in ethical evaluation as balancing information gain against potential ethical harms. The framework is then a tool for characterizing challenges teams face, and systematically disentangling competing considerations…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Ethics and Social Impacts of AI · Explainable Artificial Intelligence (XAI)
