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Titlebook: Web Technologies and Applications; APWeb 2016 Workshops Atsuyuki Morishima,Rong Zhang,Zhiwei Zhang Conference proceedings 2016 Springer Int

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Confirmatory Analysis on Influencing Factors When Mention Users in Twitterntioning users in a tweet, they will receive notifications and their possible retweets may help to initiate large cascade diffusion of the tweet. To enhance a tweet’s diffusion by finding the right persons to mention, in this paper, we propose three factors that probably have impact on tweet’s diffu
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A Stock Recommendation Strategy Based on M-LDA Modelssive research reports quickly and accurately, and make a good stock recommendation method is one of the important issues in big data quantitative investment. Based on a kind of semi-supervised topic models (M-LDA) and by setting some fundamental emotion labels along with some certain topic labels,
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Short-Term Forecasting and Application About Indoor Cooling Load Based on EDA-PSO-BP Algorithme used PSO optimization algorithm combined with BP neural network to do cooling load prediction experiments of indoor sample data of a building. The results showed that compared with other three kinds of prediction algorithms, the error of this algorithm is minimum and its running speed is the faste
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Identifying Relevant Subgraphs in Large Networks subgraphs in large networks. Relevant subgraphs in large networks contain network elements which are maintained by network administrators. We formalize the problem and propose a framework consisting of two major phases. The relevance scores of all vertex pairs are computed in the offline phase, whi
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User-Dependent Multi-relational Community Detection in Social Networkslational. In this paper, we propose a user-dependent method to detect communities in multi-relational social networks. We define a multi-relational community as a shared community over multiple single-relational graphs while the quality of a partitioning of nodes is assessed by a multi-relational mo
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