The identification of network motifs has important applications in numerous domains, such as pattern detection in biological networks and graph analysis in digital circuits. However, mining network motifs is computationally challenging, as it requires enumerating subgraphs from a real-life graph, and computing the frequency of each subgraph in a large number of random graphs. In particular, existing solutions often require days to derive network motifs from biological networks with only a few thousand vertices. To address this problem, this paper presents a novel study on network motif discovery using Graphical Processing Units (GPUs). The basic idea is to employ GPUs to parallelize a large number of subgraph matching tasks in computing sub...
Abstract—Complex networks from domains like Biology or Sociology are present in many e-Science data ...
Background Complex networks are studied across many fields of science and are particularly important...
Abstract Background Complex networks are studied across many fields of science and are particularly ...
The identification of network motifs has important applications in numerous domains, such as pattern...
Abstract — The identification of network motifs has important applications in numerous domains, such...
Network motifs are over-represented patterns within a network, and signify the fundamental building ...
Abstract. The explosive growth of various social networks such as Face-book, Twitter, and Instagram ...
Graph data has been so prevalent that efficiently obtaining useful information from them is highly d...
Motifs are regarded as network blocks because motifs can be used to present fundamental patterns in ...
Software applications for biological networks analysis rely on graphs to model the structure interac...
Software applications for biological networks analysis rely on graphs to model the structure interac...
Background: R has become the de-facto reference analysis environment in Bioinformatics. Plenty of to...
Discovery of motifs that are repeated in groups of biological sequences is a major task in bioinform...
Abstract Background R has become the de-facto reference analysis environment in Bioinformatics. Plen...
Network analysis software relies on graph layout algorithms to enable users to visually explore netw...
Abstract—Complex networks from domains like Biology or Sociology are present in many e-Science data ...
Background Complex networks are studied across many fields of science and are particularly important...
Abstract Background Complex networks are studied across many fields of science and are particularly ...
The identification of network motifs has important applications in numerous domains, such as pattern...
Abstract — The identification of network motifs has important applications in numerous domains, such...
Network motifs are over-represented patterns within a network, and signify the fundamental building ...
Abstract. The explosive growth of various social networks such as Face-book, Twitter, and Instagram ...
Graph data has been so prevalent that efficiently obtaining useful information from them is highly d...
Motifs are regarded as network blocks because motifs can be used to present fundamental patterns in ...
Software applications for biological networks analysis rely on graphs to model the structure interac...
Software applications for biological networks analysis rely on graphs to model the structure interac...
Background: R has become the de-facto reference analysis environment in Bioinformatics. Plenty of to...
Discovery of motifs that are repeated in groups of biological sequences is a major task in bioinform...
Abstract Background R has become the de-facto reference analysis environment in Bioinformatics. Plen...
Network analysis software relies on graph layout algorithms to enable users to visually explore netw...
Abstract—Complex networks from domains like Biology or Sociology are present in many e-Science data ...
Background Complex networks are studied across many fields of science and are particularly important...
Abstract Background Complex networks are studied across many fields of science and are particularly ...