DocumentCode :
266111
Title :
Utilizing deep learning for content-based community detection
Author :
Abdelbary, Hassan Abbas ; Elkorany, Abeer Mohamed ; Bahgat, Reem
Author_Institution :
Comput. Sci. Dept., Zagazig Univ., Zagazig, Egypt
fYear :
2014
fDate :
27-29 Aug. 2014
Firstpage :
777
Lastpage :
784
Abstract :
Online social networks have been wildly spread in recent years. They enable users to identify other users with common interests, exchange their opinions, and expertise. Discovering user communities from social networks have become one of the major challenges which help its members to interact with relevant people who have similar interests. Community detection approaches fall into two categories: the first one considers user´ networks while the other utilizes usergenerated content. In this paper, a multi-layer community detection model based on identifying topics of interest from user published content is presented. This model applies Gaussian Restricted Boltzmann Machine for modeling user´s posts within a social network which yields to identify their topics of interest, and finally construct communities. The effectiveness of the proposed multi-layer model is measured using KL divergence which measures similarity between users of the same community. Experiments on the real Twitter dataset show that the proposed deep model outperforms traditional community detection models that directly maps users into corresponding communities using several baseline techniques.
Keywords :
Boltzmann machines; Gaussian processes; content-based retrieval; learning (artificial intelligence); social networking (online); Gaussian restricted Boltzmann machine; KL divergence; content-based community detection; deep learning; multilayer community detection model; online social networks; user posts modeling; user published content; Communities; Data models; Mathematical model; Probabilistic logic; Probability distribution; Social network services; Vectors; Community detection; K-means; Replicated softmax; Restricted Boltzmann Machines; Topic modeling; deep learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Science and Information Conference (SAI), 2014
Conference_Location :
London
Print_ISBN :
978-0-9893-1933-1
Type :
conf
DOI :
10.1109/SAI.2014.6918274
Filename :
6918274
Link To Document :
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