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This content will become publicly available on January 22, 2026

Title: PRECEDENCE-CONSTRAINED WINTER VALUE FOR EFFECTIVE GRAPH DATA VALUATION
Data valuation is essential for quantifying data’s worth, aiding in assessing data quality and determining fair compensation. While existing data valuation methods have proven effective in evaluating the value of Euclidean data, they face limitations when applied to the increasingly popular graph-structured data. Particularly, graph data valuation introduces unique challenges, primarily stemming from the intricate dependencies among nodes and the growth in value estimation costs. To address the challenging problem of graph data valuation, we put forth an innovative solution, Precedence-Constrained Winter (PC-Winter) Value, to account for the complex graph structure. Furthermore, we develop a variety of strategies to address the computational challenges and enable efficient approximation of PC-Winter. Extensive experiments demonstrate the effectiveness of PC-Winter across diverse datasets and tasks.  more » « less
Award ID(s):
2406648 2406647
PAR ID:
10638350
Author(s) / Creator(s):
; ; ;
Publisher / Repository:
ICLR
Date Published:
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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