Title :
Strategies for Network Motifs Discovery
Author :
Ribeiro, Pedro ; Silva, Fernando ; Kaiser, Marcus
Author_Institution :
Fac. de Cienc., Univ. do Porto, Porto, Portugal
Abstract :
Complex networks from domains like Biology or Sociology are present in many e-Science data sets. Dealing with networks can often form a workflow bottleneck as several related algorithms are computationally hard. One example is detecting characteristic patterns or "network motifs" - a problem involving subgraph mining and graph isomorphism. This paper provides a review and runtime comparison of current motif detection algorithms in the field. We present the strategies and the corresponding algorithms in pseudo-code yielding a framework for comparison. We categorize the algorithms outlining the main differences and advantages of each strategy. We finally implement all strategies in a common platform to allow a fair and objective efficiency comparison using a set of benchmark networks. We hope to inform the choice of strategy and critically discuss future improvements in motif detection.
Keywords :
algorithm theory; data mining; e-Science data sets; graph isomorphism; motif detection algorithm; network motifs discovery; subgraph mining; workflow bottleneck; Biology computing; Complex networks; Computer networks; Network address translation; Neuroscience; Proteins; Runtime; Sequences; Sociology; Taxonomy; Algorithms; Complex Networks; Graph Mining; Network Motifs;
Conference_Titel :
e-Science, 2009. e-Science '09. Fifth IEEE International Conference on
Conference_Location :
Oxford
Print_ISBN :
978-0-7695-3877-8
DOI :
10.1109/e-Science.2009.20