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Neural Graduated Assignment for Maximum Common Edge Subgraphs

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The Maximum Common Edge Subgraph (MCES) problem is a crucial challenge with significant implications in domains such as biology and chemistry. Traditional approaches, which include transformations into max-clique and search-based algorithms, suffer from scalability issues when dealing with larger instances. This paper introduces ``Neural Graduated Assignment'' (NGA), a simple, scalable, unsupervised-training-based method that addresses these limitations. Central to NGA is stacking of differentiable assignment optimization with neural components, enabling high-dimensional parameterization of the matching process through a learnable temperature mechanism. We further theoretically analyze the learning dynamics of NGA, showing its design leads to fast convergence, better exploration-exploitation tradeoff, and ability to escape local optima. Extensive experiments across MCES computation, graph similarity estimation, and graph retrieval tasks reveal that NGA not only significantly improves computation time and scalability on large instances but also enhances performance compared to existing methodologies. The introduction of NGA marks a significant advancement in the computation of MCES and offers insights into other assignment problems.

Chaolong Ying, Yingqi Ruan, Xuemin Chen, Yaomin Wang, Tianshu Yu• 2025

Related benchmarks

TaskDatasetResultRank
Quadratic Assignment ProblemQAPLIB scr, bur, kra, wil instances v1--
10
Maximum Common Edge SubgraphAIDS unlabeled
Accuracy94.37
9
Maximum Common Edge SubgraphMolHIV
Accuracy99.2
9
Maximum Common Edge SubgraphMCF-7
Accuracy97.94
9
Graph RetrievalAIDS
MRR0.844
6
Graph RetrievalMolHIV
MRR0.806
6
Graph RetrievalMCF-7
MRR0.803
6
Graph Similarity ComputationAIDS
MSE1.13
6
Graph Similarity ComputationMolHIV
MSE0.66
6
Graph Similarity ComputationMCF-7
MSE0.99
6
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