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Personalized Recommendations Based on Sentimental Interest Community Detection

机译:基于情感兴趣社区检测的个性化推荐

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摘要

Communities have become a popular platform of mining interests for recommender systems. The semantics of topics reflect users’ implicit interests. Sentiments on topics imply users’ sentimental tendency. People with common sentiments can form resonant communities of interest. In this paper, a resonant sentimental interest community-based recommendation model is proposed to improve the accuracy performance of recommender systems. First, we learn the weighted semantics vector and sentiment vector to model semantic and sentimental user profiles. Then, by combining semantic and sentimental factors, resonance relationship is computed to evaluate the resonance relationship of users. Finally, based on resonance relationships, resonant community is detected to discover a resonance group to make personalized recommendations. Experimental results show that the proposed model is more effective in finding semantics-related sentimental interests than traditional methods.
机译:社区已经成为推荐系统挖掘兴趣的流行平台。主题的语义反映了用户的隐性兴趣。主题感暗示着用户的情感倾向。具有共同情感的人们可以形成共鸣的兴趣社区。本文提出了一种基于共振情感兴趣社区的推荐模型,以提高推荐系统的准确性。首先,我们学习加权语义向量和情感向量以对语义和情感用户配置文件进行建模。然后,通过结合语义和情感因素,计算共振关系以评估用户的共振关系。最后,基于共振关系,检测共振社区以发现共振组以提出个性化推荐。实验结果表明,与传统方法相比,该模型在寻找与语义相关的情感兴趣方面更为有效。

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