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Multi-affect(ed): improving recommendation with similarity-enhanced user reliability and influence propagation

机译:多影响(ED):提高具有相似性增强的用户可靠性和影响传播的推荐

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摘要

Traditional recommendation algorithms predict the latent interest of an active user by collecting rating information from other similar users or items. Recently, more and more recommendation systems attempt to involve social relations to improve recommendation performance. However, the existing works either leave out the user reliability or cannot capture the correlation between two users who are similar but not socially connected. Besides, they also take the trust value between users either 0 or 1, thus degenerating the prediction accuracy. In this paper, we propose an efficient social affect model, multi-affected), for recommendation via incorporating both users' reliability and influence propagation. Specifically, the model contains two main components, i.e., computation of user reliability and influence propagation, designing of user-shared feature space. Firstly, a reliability calculation strategy based on user similarity is developed for measuring the recommendation accuracy between users. Then, the factor of influence propagation relationship among users is taken into consideration. Finally, the multi-affect(ed) model is developed with user-shared feature space to generate the predicted ratings. Experimental results demonstrate that the proposed model achieves better accuracy than other counterparts recommendation techniques.
机译:传统推荐算法通过从其他类似用户或项目中收集评级信息来预测活动用户的潜在兴趣。最近,越来越多的建议系统试图涉及社会关系,以提高推荐绩效。但是,现有的作品要么遗漏用户的可靠性,要么无法捕获相似但未与社会连接的两个用户之间的相关性。此外,它们还采用了用户0或1之间的信任值,从而退化预测精度。在本文中,我们提出了一种高效的社会影响模型,多影响),以通过纳入用户的可靠性和影响传播,以供建议。具体地,该模型包含两个主要组件,即用户可靠性和影响传播的计算,用户共享特征空间的设计。首先,开发了一种基于用户相似性的可靠性计算策略,用于测量用户之间的推荐准确性。然后,考虑用户之间影响传播关系的因素。最后,使用用户共享的特征空间开发了多影响(ED)模型以生成预测的额定值。实验结果表明,所提出的模型比其他对应的推荐技术实现更好的准确性。

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