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Enhancing Social Recommendation with Sentiment Communities

机译:通过情感社区加强社会建议

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Among the various recommender systems proposed in the literature, there is an increase in relevance and number of those that suggest users of possible interest to the target user. In this article, we propose a new algorithm for realizing user recommenders, named SCORES (Sentiment COmmunities REcommender System). This algorithm relies on the identification of sentiment communities in which, for each topic cited by the user, we consider not only the relative sentiment, but also the volume and the objectivity of contents generated by him. The graph related to each topic is obtained by considering the Tanimoto similarity between users. The recommendation process occurs by clustering the obtained graph to detect latent communities, and suggesting to the target user the most similar K users based on tie strength measures. A comparative analysis between SCORES and some state-of-the-art approaches shows the benefits in term of performance.
机译:在文献中提出的各种推荐制度中,建议目标用户可能兴趣的用户的相关性和数量增加。在本文中,我们提出了一种实现了一个新的算法来实现用户推荐者,命名得分(情绪社区推荐系统)。该算法依赖于对用户引用的每个主题的情感社区的识别,我们不仅考虑相对情绪,还考虑他产生的内容的体积和客观性。通过考虑用户之间的Tanimoto相似性来获得与每个主题相关的图表。通过群集所获得的图来检测潜在社区,并建议基于领带强度测量的最常相似的K用户来进行推荐过程。分数与某些最先进的方法之间的比较分析表明了性能期限的益处。

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