Suffix Graph - An Efficient Approach for Network Motif Mining

R. Nikam, U. Chauhan
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引用次数: 1

Abstract

Network motif is a pattern of inter-connections occurring in complex network in numbers that are significantly higher than those in similar randomized network. The basic premise of finding network motifs lie in the ability to compute the frequency of the subgraphs. In order to discover network motif, one has to compute a subgraph census on the original network that calculates the frequency of all the subgraphs of certain type. Then there is a need to compute the frequency of a set of subgraphs on the randomized similar network. The bottleneck of the entire motif discovery process is therefore to compute the subgraph frequencies and this is the core computational problem. The proposed work is to present the Suffix-Graph, a data structure that store graphs efficiently and to design an algorithm to retrieve subgraph efficiently that detects network motifs and apply them to transcriptional interactions in Escherichia coli.
后缀图——一种有效的网络Motif挖掘方法
网络基序是复杂网络中出现的一种相互联系的模式,其数量明显高于类似的随机网络。寻找网络基序的基本前提是计算子图频率的能力。为了发现网络motif,必须在原始网络上计算子图普查,该普查计算所有特定类型的子图的频率。然后需要计算随机相似网络上一组子图的频率。因此,子图频率的计算是整个motif发现过程的瓶颈,也是核心计算问题。提出的工作是提出后缀图,这是一种有效存储图的数据结构,并设计一种算法来检索有效检测网络基序的子图,并将其应用于大肠杆菌的转录相互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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