Efficient Streaming Subgraph Isomorphism with Graph NeuralNetworks
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Hoang, Trung Dung
Yin, Hongzhi
Weidlich, Matthias
Nguyen, Quoc Viet Hung
Aberer, Karl
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Abstract
Queries to detect isomorphic subgraphs are important in graphbased data management. While the problem of subgraph isomorphism search has received considerable attention for the static setting of a single query, or a batch thereof, existing approaches do not scale to a dynamic setting of a continuous stream of queries. In this paper, we address the scalability challenges induced by a stream of subgraph isomorphism queries by caching and re-use of previous results. We first present a novel subgraph index based on graph embeddings that serves as the foundation for efficient stream processing. It enables not only effective caching and re-use of results, but also speeds-up traditional algorithms for subgraph isomorphism in case of cache misses. Moreover, we propose cache management policies that incorporate notions of reusability of query results. Experiments using real-world datasets demonstrate the effectiveness of our approach in handling isomorphic subgraph search for streams of queries.
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Proceedings of the VLDB Endowment
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14
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5
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Knowledge representation and reasoning
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Computer Science, Information Systems
Computer Science, Theory & Methods
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Duong, CT; Hoang, TD; Yin, H; Weidlich, M; Nguyen, QVH; Aberer, K, Efficient Streaming Subgraph Isomorphism with Graph Neural Networks, Proceedings of the VLDB Endowment, 2021, 14 (5), pp. 730-742