Budgeted Interactive Property Graph Repair with Graph Neural Networks
Published in ACM SIGMOD 2027 (To Appear), 2027
Introduces a Graph Neural Network–based framework for interactive property graph repair that combines representation learning, optimization, and human expertise under budget constraints. The framework learns to estimate repair difficulty and allocates a limited budget between automatic inference and targeted human input.
To appear at ACM SIGMOD 2027. A preprint and code will be linked here once available.
Recommended citation: A. Pachera, A. Bonifati, A. Mauri. Budgeted Interactive Property Graph Repair with Graph Neural Networks. ACM SIGMOD 2027 (to appear).
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