subgraph isomorphism
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2021 ◽  
Author(s):  
Guangxian Dong ◽  
Yalin Zheng ◽  
Shan He ◽  
Donghui Guo ◽  
Lin Li

2021 ◽  
Vol 48 (9) ◽  
pp. 973-980
Author(s):  
Yunyoung Choi ◽  
Kunsoo Park

Author(s):  
Sonja Kraiczy ◽  
Ciaran McCreesh

Graph homomorphism problems involve finding adjacency-preserving mappings between two given graphs. Although theoretically hard, these problems can often be solved in practice using constraint programming algorithms. We show how techniques from the state-of-the-art in subgraph isomorphism solving can be applied to broader graph homomorphism problems, and introduce a new form of filtering based upon clique-finding. We demonstrate empirically that this filtering is effective for the locally injective graph homomorphism and subgraph isomorphism problems, and gives the first practical constraint programming approach to finding general graph homomorphisms.


2021 ◽  
Vol 6 (1) ◽  
Author(s):  
Giovanni Micale ◽  
Giorgio Locicero ◽  
Alfredo Pulvirenti ◽  
Alfredo Ferro

AbstractTemporal networks are graphs where each edge is associated with a timestamp denoting when two nodes interact. Temporal Subgraph Isomorphism (TSI) aims at retrieving all the subgraphs of a temporal network (called target) matching a smaller temporal network (called query), such that matched target edges appear in the same chronological order of corresponding query edges. Few algorithms have been proposed to solve the TSI problem (or variants of it) and most of them are applicable only to small or specific queries. In this paper we present TemporalRI, a new subgraph isomorphism algorithm for temporal networks with multiple contacts between nodes, which is inspired by RI algorithm. TemporalRI introduces the notion of temporal flows and uses them to filter the search space of candidate nodes for the matching. Our algorithm can handle queries of any size and any topology. Experiments on real networks of different sizes show that TemporalRI is very efficient compared to the state-of-the-art, especially for large queries and targets.


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Jordan K. Matelsky ◽  
Elizabeth P. Reilly ◽  
Erik C. Johnson ◽  
Jennifer Stiso ◽  
Danielle S. Bassett ◽  
...  

AbstractRecent advances in neuroscience have enabled the exploration of brain structure at the level of individual synaptic connections. These connectomics datasets continue to grow in size and complexity; methods to search for and identify interesting graph patterns offer a promising approach to quickly reduce data dimensionality and enable discovery. These graphs are often too large to be analyzed manually, presenting significant barriers to searching for structure and testing hypotheses. We combine graph database and analysis libraries with an easy-to-use neuroscience grammar suitable for rapidly constructing queries and searching for subgraphs and patterns of interest. Our approach abstracts many of the computer science and graph theory challenges associated with nanoscale brain network analysis and allows scientists to quickly conduct research at scale. We demonstrate the utility of these tools by searching for motifs on simulated data and real public connectomics datasets, and we share simple and complex structures relevant to the neuroscience community. We contextualize our findings and provide case studies and software to motivate future neuroscience exploration.


2021 ◽  
Vol E104.D (4) ◽  
pp. 481-489
Author(s):  
Natsuhito YOSHIMURA ◽  
Masashi TAWADA ◽  
Shu TANAKA ◽  
Junya ARAI ◽  
Satoshi YAGI ◽  
...  

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