Redirigiendo al acceso original de articulo en 15 segundos...
Inicio  /  Future Internet  /  Vol: 11 Par: 12 (2019)  /  Artículo
ARTÍCULO
TITULO

Research on Community Detection of Online Social Network Members Based on the Sparse Subspace Clustering Approach

Zihe Zhou and Bo Tian    

Resumen

The text data of the social network platforms take the form of short texts, and the massive text data have high-dimensional and sparse characteristics, which does not make the traditional clustering algorithm perform well. In this paper, a new community detection method based on the sparse subspace clustering (SSC) algorithm is proposed to deal with the problem of sparsity and the high-dimensional characteristic of short texts in online social networks. The main ideal is as follows. First, the structured data including users? attributions and user behavior and unstructured data such as user reviews are used to construct the vector space for the network. And the similarity of the feature words is calculated by the location relation of the feature words in the synonym word forest. Then, the dimensions of data are deduced based on the principal component analysis in order to improve the clustering accuracy. Further, a new community detection method of social network members based on the SSC is proposed. Finally, experiments on several data sets are performed and compared with the K-means clustering algorithm. Experimental results show that proper dimension reduction for high dimensional data can improve the clustering accuracy and efficiency of the SSC approach. The proposed method can achieve suitable community partition effect on online social network data sets.

 Artículos similares

       
 
Yuyang Liu, Bo Feng and Yu Yao    
With the intensification of water pollution problems worldwide, constructed wetlands, as a green, efficient, and energy-saving wastewater treatment technology, have gradually attracted the wide attention of scholars at home and abroad. In order to better... ver más
Revista: Water

 
Jiju Guo, Wengeng Cao, Guohui Lang, Qifa Sun, Tian Nan, Xiangzhi Li, Yu Ren and Zeyan Li    
The presence of high concentrations of geogenic arsenic (As) in groundwater poses a serious threat to the health of millions of individuals globally. This paper examines the research progress of groundwater with high concentrations of geogenic As through... ver más
Revista: Water

 
Paolo Bellavista and Giuseppe Di Modica    
A Digital Twin (DT) refers to a virtual representation or digital replica of a physical object, system, process, or entity. This concept involves creating a detailed, real-time digital counterpart that mimics the behavior, characteristics, and attributes... ver más
Revista: Future Internet

 
Xinyi Wang, Yixuan Xie, Linhui Xia, Jin He and Beiyu Lin    
As Melbourne faces exponential population growth, the necessity for resilient urban planning strategies becomes critical. These strategies include mixed land use, density, diversity, and sustainable transportation through transit-oriented development (TO... ver más
Revista: Buildings

 
Mohamed Dhiaeddine Messaoudi, Bob-Antoine J. Menelas and Hamid Mcheick    
This research introduces an innovative smart cane architecture designed to empower visually impaired individuals. Integrating advanced sensors and social media connectivity, the smart cane enhances accessibility and encourages physical activity. Three me... ver más
Revista: IoT