Semivalue-based data valuation is arbitrary and gameable
Hannah Diehl, Ashia C. Wilson

TL;DR
Semivalue-based data valuation methods are highly sensitive to modeling choices and can be manipulated, raising concerns about their reliability and fairness in machine learning applications.
Contribution
This paper critically analyzes the arbitrariness and gameability of semivalue-based data valuation, highlighting vulnerabilities and ethical concerns.
Findings
Small changes in utility functions cause large valuation shifts
Adversarial strategies can exploit valuation ambiguities
Lack of principled guidance for utility specification
Abstract
The game-theoretic notion of the semivalue offers a popular framework for credit attribution and data valuation in machine learning. Semivalues have been proposed for a variety of high-stakes decisions involving data, such as determining contributor compensation, acquiring data from external sources, or filtering out low-value datapoints. In these applications, semivalues depend on the specification of a utility function that maps subsets of data to a scalar score. While it is broadly agreed that this utility function arises from a composition of a learning algorithm and a performance metric, its actual instantiation involves numerous subtle modeling choices. We argue that this underspecification leads to varying degrees of arbitrariness in semivalue-based valuations. Small, but arguably reasonable changes to the utility function can induce substantial shifts in valuations across…
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Taxonomy
TopicsHealthcare Operations and Scheduling Optimization
