Travel user interest discovery from visual shared data in social networks

Author(s):  
Fatima Mohamed Yassin ◽  
Onsa Lazzez ◽  
Wael Ouarda ◽  
Adel M. Alimi
2014 ◽  
Vol 543-547 ◽  
pp. 1856-1859
Author(s):  
Xiang Cui ◽  
Gui Sheng Yin

Recommender systems have been proven to be valuable means for Web online users to cope with the information overload and have become one of the most powerful and popular tools in electronic commerce. We need a method to solve such as what items to buy, what music to listen, or what news to read. The diversification of user interests and untruthfulness of rating data are the important problems of recommendation. In this article, we propose to use two phase recommendation based on user interest and trust ratings that have been given by actors to items. In the paper, we deal with the uncertain user interests by clustering firstly. In the algorithm, we compute the between-class entropy of any two clusters and get the stable classes. Secondly, we construct trust based social networks, and work out the trust scoring, in the class. At last, we provide some evaluation of the algorithms and propose the more improve ideas in the future.


2020 ◽  
Vol 45 (2) ◽  
pp. 198-222
Author(s):  
María Pilar Martínez-Costa ◽  
Cristina Sánchez-Blanco ◽  
Javier Serrano-Puche

AbstractThe variety of devices and the socialization of consumption have decentralized access to online information which is not retrieved directly from media websites but through social networks. These same factors have driven user interest towards a wider range of both ‘hard’ and ‘soft’ topics. The aim of this article is to identify the consumption of news on these topics among digital users in Spain. The methodology used is based on an analysis of the survey conducted as part of the Digital News Report 2017. Following this analysis, a conclusion has been reached that the most popular hard news stories in Spain are those related to the local and regional community itself, and to health and education, while the most popular soft news stories relate to lifestyles and arts and culture. The analysis has revealed that increased interest in news and greater topic specialization result in more diversified use of sources, formats, and complementary routes.


Author(s):  
Jun Jun Cheng ◽  
Yan Chao Zhang ◽  
Xin Zhou ◽  
Hui Cheng

Studies have shown that influential nodes play an important role in all kinds of dynamic behavior in the complex network. Excavation or recognition of such nodes contributes to the development of application areas such as social network advertising and user interest recommendation. Although some heuristic algorithms such as degree, betweenness, closeness and k-shell (or k-core) can identify influential nodes at the same time, they are disadvantaged in terms of accuracy and time complexity. Based on this, the authors propose a novel local weight index to distinguish the node influence based on the theory of ties strength. This index emphasizes that the node influence is jointly decided by the quantity and quality of the neighbors, and its time complexity is much lower than closeness and betweenness. With the aid of SIR information transmission model, this paper verifies the validity of local weight index.


Author(s):  
Liang Jiang ◽  
Lu Liu ◽  
Jingjing Yao ◽  
Leilei Shi

AbstractWith the rapid development of mobile edge computing, mobile social networks are gradually infiltrating into our daily lives, in which the communities are an important part of social networks. Internet of People such as online social networks is the next frontier for the Internet of Things. The combination of social networking and mobile edge computing has an important application value and is the development trend of future networks. However, how to detect evolutionary communities accurately and efficiently in dynamic heterogeneous social networks remains a fundamental problem. In this paper, a novel User Interest Community Evolution (UICE) model based on subgraph matching is proposed for accurately detecting the corresponding communities in the evolution of the user interest community. The community evolutionary events can be quickly captured including forming, dissolving, evolving and so on with the introduction of core subgraph. A variant of subgraph matching, called Subgraph Matching with Dynamic Weight (SMDW), is proposed to solve the problem of updating the core subgraph due to the change of core user’s interest when tracking evolutionary communities. Finally, the experiments based on the real datasets have been designed to evaluate the performance of the proposed model by comparing it with the state-of-art methods in this area and complete data processing through the local edge computing layer. The experimental results demonstrate that the UICE model presented in this paper has achieved better accuracy, higher efficiency and better scalability against existing methods.


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