Fusing Social Networks with Deep Learning for Volunteerism Tendency Prediction
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Fusing Social Networks with Deep Learning for Volunteerism Tendency Prediction
Social networks contain a wealth of useful information. In this paper, we study a challenging task for integrating users’ information from multiple heterogeneous social networks to gain a comprehensive understanding of users’ interests and behaviors. Although much effort has been spent to study this problem, most existing approaches adopt linear models to fuse multiple sources. Such approaches ...
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تاریخ انتشار 2016