Machine Decisions and Human Consequences
Teresa Scantamburlo, Andrew Charlesworth, Nello Cristianini

TL;DR
This paper explains how machine learning classifiers work, especially in criminal justice, highlighting their technical features and normative implications for fairness, transparency, and privacy in automated decision-making.
Contribution
It provides a detailed technical and normative analysis of classifiers like HART, linking their features to societal and legal considerations in algorithmic decision-making.
Findings
Classifiers operate based on correlation, not causation.
Technical features of classifiers have normative implications.
HART exemplifies how classifier design affects fairness and transparency.
Abstract
As we increasingly delegate decision-making to algorithms, whether directly or indirectly, important questions emerge in circumstances where those decisions have direct consequences for individual rights and personal opportunities, as well as for the collective good. A key problem for policymakers is that the social implications of these new methods can only be grasped if there is an adequate comprehension of their general technical underpinnings. The discussion here focuses primarily on the case of enforcement decisions in the criminal justice system, but draws on similar situations emerging from other algorithms utilised in controlling access to opportunities, to explain how machine learning works and, as a result, how decisions are made by modern intelligent algorithms or 'classifiers'. It examines the key aspects of the performance of classifiers, including how classifiers learn,…
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Taxonomy
TopicsEthics and Social Impacts of AI
