Title :
Identifying Users´ Interest Similarity Based on Clustering Hot Vertices in Social Networks
Author :
Tianchi Mo ; Hongxiao Fei ; Li Kuang ; Qifei Qin
Author_Institution :
Sch. of Software, Central South Univ. (CSU), Changsha, China
Abstract :
Identifying users´ similarity is a very important researching point because its result can be applied to many application systems. In social networks, the user circles are built not only based on their relationships in real-life, but also on common interests. Some existing approaches cannot fully capture users´ similarity from the perspective of their common interests, while some other approaches are too time-consuming or space-consuming. In this paper, we propose a method of identifying users´ interest similarity based on clustering Hot Vertices (HotV). A hot vertex in a social network is an account which has a large number of fans. The approach extracts users´ common interests by mining and clustering the hot vertices that the two users are following simultaneously. Both the experiment and theoretical analysis have proved that the proposed approach makes a significant improvement on the precision of similarity measuring with a relatively low time and space complexity.
Keywords :
collaborative filtering; computational complexity; data mining; pattern clustering; social networking (online); HotV; collaborative filtering; hot vertex clustering; hot vertex mining; relatively low space complexity; relatively low time complexity; similarity measuring; social networks; users interest similarity identification; Fans; Feature extraction; Grain size; Mathematical model; Recommender systems; Social network services; Time complexity; Clustering Analysis; Collaborative Filtering; Social Network; Users´ Interests Similarity;
Conference_Titel :
Services Computing Conference (APSCC), 2014 Asia-Pacific
DOI :
10.1109/APSCC.2014.35