Quotient Semivalues for False-Name-Resistant Data Attribution
Florian A. D. Burnat, Brittany I. Davidson

TL;DR
This paper introduces quotient semivalue mechanisms for data attribution that are resistant to false-name manipulations, improving fairness and robustness in strategic data contribution scenarios.
Contribution
It formalizes false-name manipulation in ML data attribution and proposes quotient semivalue mechanisms that are exactly or approximately false-name-proof under certain conditions.
Findings
Quotient semivalue mechanisms reduce manipulation gain in synthetic experiments.
Exact Shapley-fair attribution is incompatible with unrestricted false-name-proofness.
Mechanisms bound manipulation gain and fairness loss based on measurable quantities.
Abstract
Data valuation methods allocate payments and audit training data's contribution to machine-learning pipelines; however, they often assume passive contributors. In reality, contributors can split datasets across pseudonymous identities, duplicate high-value examples, create near-duplicates, or launder synthetic variants to inflate their share. We formalize this as false-name manipulation in ML data attribution. Our main construction is the quotient semivalue mechanism: compute Shapley-, Banzhaf-, or Beta-style values over evidence-backed attribution clusters instead of raw identities, using a canonical-representative operator to absorb within-cluster duplication. We prove an impossibility: on a fixed monotone data-value game, exact Shapley-fair attribution over reported identities is incompatible with unrestricted false-name-proofness, even on binary-valued instances, and characterize…
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