Abstract
Recently, several works have studied the problem of view selection in graph databases. However, existing methods cannot fully exploit the graph properties of views, e.g., supergraph views and common subgraph views, which leads to a low view utility and duplicate view content. To address the problem, we propose an extended graph view that persists all the edge-induced subgraphs to answer the subgraph and supergraph queries simultaneously. Furthermore, we present the graph gene algorithm (GGA), which relies on a set of view transformations to reduce the view space and optimize the view benefit. Extensive experiments on real-life and synthetic datasets demonstrated GGA outperformed other selection methods in both effectiveness and efficiency.
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CITATION STYLE
Zhang, C., Lu, J., Guo, Q., Zhang, X., Han, X., & Zhou, M. (2021). Automatic View Selection in Graph Databases. In ACM International Conference Proceeding Series (pp. 197–202). Association for Computing Machinery. https://doi.org/10.1145/3468791.3468794
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