A wide range of biomedical applications entails solving the subgraph isomorphism problem, i.e. nding all the possible subgraphs of a target graph that are structurally equivalent to an input pattern graph. Targets may be very large and complex structures compared to patterns. Methods that address this NP-complete problem use heuristics. Their performance in both time and quality depends on a few subtleties of those heuristics. This paper compares the performance of state-of-theart algorithms for subgraph isomorphism on small, medium and very large graphs. Results show that heuristics based on pattern graphs alone prove to be the most ecient, an unexpected result.

Simple Pattern-only Heuristics Lead To Fast Subgraph Matching Strategies on Very Large Networks / Antonino, Aparo; Bonnici, Vincenzo; Micale, Giovanni; Ferro, Alfredo; Shasha, Dennis; Pulvirenti, Alfredo; Giugno, Rosalba. - (2019), pp. 803.131-803.138. (Intervento presentato al convegno 12th International Conference on Practical Applications of Computational Biology and Bioinformatics, PACBB 2018; tenutosi a Toledo (Spain) nel 20-22 June, 2018) [10.1007/978-3-319-98702-6_16].

Simple Pattern-only Heuristics Lead To Fast Subgraph Matching Strategies on Very Large Networks

Vincenzo Bonnici;
2019-01-01

Abstract

A wide range of biomedical applications entails solving the subgraph isomorphism problem, i.e. nding all the possible subgraphs of a target graph that are structurally equivalent to an input pattern graph. Targets may be very large and complex structures compared to patterns. Methods that address this NP-complete problem use heuristics. Their performance in both time and quality depends on a few subtleties of those heuristics. This paper compares the performance of state-of-theart algorithms for subgraph isomorphism on small, medium and very large graphs. Results show that heuristics based on pattern graphs alone prove to be the most ecient, an unexpected result.
2019
Simple Pattern-only Heuristics Lead To Fast Subgraph Matching Strategies on Very Large Networks / Antonino, Aparo; Bonnici, Vincenzo; Micale, Giovanni; Ferro, Alfredo; Shasha, Dennis; Pulvirenti, Alfredo; Giugno, Rosalba. - (2019), pp. 803.131-803.138. (Intervento presentato al convegno 12th International Conference on Practical Applications of Computational Biology and Bioinformatics, PACBB 2018; tenutosi a Toledo (Spain) nel 20-22 June, 2018) [10.1007/978-3-319-98702-6_16].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11381/2901548
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