Community discovery method based on multidimensional social network

A community discovery and social network technology, applied in the field of data mining, can solve problems such as high computational time complexity, only two communities can be divided, and it is not suitable for multi-dimensional social networks, and achieves good accuracy and effectiveness.

Active Publication Date: 2018-05-29
HENAN UNIV OF SCI & TECH
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Problems solved by technology

[0004] 1. The document [Kernighn BW, LinS.A efficient heuristic procedure for partitioning graphs[J]. Bell System Techn-Ical Journal, 1970,49(2):292~307.] proposed the K-L algorithm, which is a heuristic optimization method. A gain function Q is introduced into the algorithm, and then the greedy algorithm principle is used to exchange node pairs to maximize the Q value. Finally, two communities with known sizes are divided. The disadvantage is that only two communities can be divided and two community members must be known. quantity;
[0005] 2. The literature [Girvan M, Newman M E J. Community structure in social and biological networks [J]. Proceedings of the National Academy of Science, 2002, 99 (12): 7821-7826.] proposed the GN algorithm, the GN algorithm The idea is that the betweenness of edges between communities is greater than the betweenness of edges within communities. By continuously removing the edges with the largest betweenness until the entire network degenerates into a community, the advantage of the algorithm is that it does not need to know the number of communities in advance, but Its calculation time complexity is high;
[0006] 3. The literature [Tang Lei, Wang Xufei, Liu Huan.Community detection inmultidimensional networks[R] / / Tec hnical Report TR10-006.Arizona:ArizonaState University,2010.] proposes an algorithm for solving multidimensional networks. Network integration, there are mainly four integration methods: network integration, utility integration, feature integration and partition integration, and then use spectral clustering method, random block model method or The hidden space model can divide the above-mentioned integrated network into communities, but the disadvantage is that they can only be used for medium-sized undirected networks, and are not suitable for community discovery in complex directed multi-dimensional social networks.

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  • Community discovery method based on multidimensional social network
  • Community discovery method based on multidimensional social network
  • Community discovery method based on multidimensional social network

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example

[0077] Collect 526 users from the 5 "circles" of Weibo (such as "academic circle", "sports circle", "literary circle", "machine learning circle" and "IT circle"), and then collect the information of these users. Basic information, including ID, friend relationship, number of comments, recommended forwarding times, and Weibo content.

[0078] The specific information of the four networks obtained is shown in Table 2;

[0079] Network name

Number of nodes (units)

Number of sides (bar)

graphic category

Friends Network

526

4670

directed unweighted graph

Comment network

501

6403

directed weighted graph

Recommended forwarding relationship network

512

6145

directed weighted graph

Affinity Network

526

5846

undirected weighted graph

[0080] Table 2

[0081] The friend relationship network, comment relationship network, and recommendation and forwarding relationship network are integr...

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Abstract

The invention discloses a community discovery method based on a multi-dimensional social network. In the method, multi-level fusion is conducted on a friend relationship network, a comment relationship network, a recommendation forwarding relationship network and an interest similarity network in the social network to obtain the total correlation degree of users; then, with each user regarded as anode and the total correlation degree of the users taken as the transmission probability, the community is divided by the label propagation algorithm, so that social discovery is completed. As users'social behaviors are comprehensively considered and reasonable selection and fusion are conducted, the method has great accuracy and effectiveness.

Description

technical field [0001] The invention belongs to the technical field of data mining, and more specifically relates to a community discovery method based on a multidimensional social network. Background technique [0002] Usually, the network is abstracted into a graph. Users are represented by nodes in the graph, and relationships between users are represented by edges. The structure shown in this network is called a community. The connection density between nodes within a community is high, while the connection density between nodes in different communities is low. [0003] Community discovery is an effective method for analyzing social networks. As a research hotspot in the field of social network data mining, community discovery has been paid more and more attention by scholars. In the field of community discovery, many scholars have proposed or summarized some classic community discovery algorithms: [0004] 1. The document [Kernighn BW, LinS.A efficient heuristic proce...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/30G06Q50/00
CPCG06Q50/01G06F16/334G06F16/337G06F16/958
Inventor 邢玲马强高建平朱家磊吴红海谢萍
Owner HENAN UNIV OF SCI & TECH
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