Efficient Data Shapley for Weighted Nearest Neighbor Algorithms
CoRR(2024)
摘要
This work aims to address an open problem in data valuation literature
concerning the efficient computation of Data Shapley for weighted K nearest
neighbor algorithm (WKNN-Shapley). By considering the accuracy of hard-label
KNN with discretized weights as the utility function, we reframe the
computation of WKNN-Shapley into a counting problem and introduce a
quadratic-time algorithm, presenting a notable improvement from O(N^K), the
best result from existing literature. We develop a deterministic approximation
algorithm that further improves computational efficiency while maintaining the
key fairness properties of the Shapley value. Through extensive experiments, we
demonstrate WKNN-Shapley's computational efficiency and its superior
performance in discerning data quality compared to its unweighted counterpart.
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