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Online community partitioning method based on genetic algorithm and priori knowledge

A network community and prior knowledge technology, applied in the field of community division of the WS small world network model, can solve the problems of low algorithm division efficiency, weak global search ability and local search ability, and poor diversity, so as to improve the global search ability. Ability and division efficiency, improve local search ability and division stability, and improve the effect of accuracy

Inactive Publication Date: 2012-11-28
XIDIAN UNIV
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Problems solved by technology

[0006] At present, the network community structure division method based on genetic algorithm is mainly composed of initialization phase, crossover operator and mutation operator. The most important thing is to mutate according to the neighborhood node information. The disadvantages of this method are: random initialization leads to low efficiency of algorithm initialization, one-way crossover makes the diversity of the obtained solutions poor, and based on neighborhood node information. The way of mutation makes the algorithm division efficiency low, which leads to weak global search ability and local search ability of the algorithm, and low division accuracy and division efficiency

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  • Online community partitioning method based on genetic algorithm and priori knowledge
  • Online community partitioning method based on genetic algorithm and priori knowledge
  • Online community partitioning method based on genetic algorithm and priori knowledge

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Embodiment Construction

[0027] Combine below figure 1 The specific implementation steps of the present invention are further described in detail.

[0028] Step 1, read in an actual network graph, and generate the adjacency matrix A corresponding to the network graph ij .

[0029] In the embodiment of the present invention, the network diagram used is the karate community structure diagram in the actual network, such as figure 2 As shown, it is a network of relationships among karate club members in a university in the United States, which was constructed by Zachary through two years of observation time in the early 1970s, figure 2 It consists of 34 nodes and 78 edges. The 34 nodes in the figure represent the 34 members of the karate club, and the 78 edges represent the connections between the members.

[0030] In the embodiment of the present invention, what adopt is the adjacency matrix of karate network graph, A ij Expressed as:

[0031] A ij =...

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Abstract

The invention discloses an online community partitioning method based on genetic algorithm and priori knowledge, mainly solving the problems in the prior art, such as poor portioning stability, low accuracy rate and low efficiency. The online community partitioning method comprises the steps of: 1, reading an actual network diagram in to generate an adjacent matrix; 2, setting initialization parameters; 3, randomly generating an initial population; 4, calculating a fitness value according to the adjacent matrix, selecting 450 chromosomes with the maximum fitness values as a parent population; 5, carrying out genetic manipulation on the chromosomes in the parent population, forming a child population; 6, partially searching the child population; 7, merging the parent population with the child population to obtain a new parent population; and 8, judging whether an operation algebra in the step 3 reaches 50, is so, ending the operation, and outputting partitioning results of all nodes in the chromosomes with the maximum fitness, namely community partitioning results. The online community partitioning method has the advantages of stable partitioning result, high partitioning accuracy rate and high partitioning efficiency.

Description

technical field [0001] The invention belongs to the field of computers, relates to a community division method in a complex network, and further relates to the community division of a WS small-world network model, which can be used to divide communities in a network, and is one of the research hotspots in complex networks in recent years. Background technique [0002] At present, complex networks have become a research hotspot in many disciplines. With the in-depth research on the physical meaning and mathematical characteristics of network properties, people have found that many actual networks have community structures, that is, the entire network is composed of several "communities". of. The connections between nodes within each community are relatively close, but the connections between communities are relatively sparse. Revealing the network community structure is of great significance for in-depth understanding of network structure and analysis of network characterist...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/12G06F17/30
Inventor 尚荣华焦李成白靖靳超吴建设李阳阳公茂果马文萍韩红
Owner XIDIAN UNIV
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