Community detection in weighted networks using probabilistic generative model

Author:

Hajibabaei Hossein,Seydi Vahid,Koochari Abbas

Abstract

AbstractCommunity detection in networks is a useful tool for detecting the behavioral and inclinations of users to a specific topic or title. Weighted, unweighted, directed, and undirected networks can all be used for detecting communities depending on the network structure and content. The proposed model framework for community detection is based on weighted networks. We use two important and effective concepts in graph analysis. The structural density between nodes is the first concept, and the second is the weight of edges between nodes. The proposed model advantage is using a probabilistic generative model that estimates the latent parameters of the probabilistic model and detecting the community based on the probability of the presence or absence of weighted edge. The output of the proposed model is the intensity of belonging each weighted node to the communities. A relationship between the observation of a pair of nodes in multiple communities and the probability of an edge with a high weight between them, is one of the important outputs that interpret the detected communities by finding relevancy between membership of nodes to communities and edge weight. Experiments are performed on real-world weighted networks and synthetic weighted networks to evaluate the performance and accuracy of the proposed algorithm. The results will show that the proposed algorithm is more density and accurate than other algorithms in weighted community detection.

Publisher

Springer Science and Business Media LLC

Subject

Artificial Intelligence,Computer Networks and Communications,Hardware and Architecture,Information Systems,Software

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. NETWORK COMMUNITY DETECTION BASED ON IMPROVING VERTEX COORDINATES;Vinh University Journal of Science;2024-06-20

2. Exploring Link Prediction Techniques in Social Network Analysis for Community Detection;2024 3rd International Conference on Computational Modelling, Simulation and Optimization (ICCMSO);2024-06-14

3. A motif-based probabilistic approach for community detection in complex networks;Journal of Intelligent Information Systems;2024-03-16

4. Leveraging neighborhood and path information for influential spreaders recognition in complex networks;Journal of Intelligent Information Systems;2023-11-01

5. NETWORK COMMUNITY DETECTION BASED ON THE ANGLE BETWEEN TWO VECTORS;Vinh University Journal of Science;2023-03-20

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