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Dual Implicit Mining-Based Latent Friend Recommendation

机译:基于双隐式挖掘的潜在朋友推荐

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摘要

The latent friend recommendation in online social media is interesting, yet challenging, because the user-item ratings and the user-user relationships are both sparse. In this paper, we propose a new dual implicit mining-based latent friend recommendation model that simultaneously considers the implicit interest topics of users and the implicit link relationships between the users in the local topic cliques. Specifically, we first propose an algorithm called all reviews from a user and all tags from their corresponding items to learn the implicit interest topics of the users and their corresponding topic weights, then compute the user interest topic similarity using a symmetric Jensen-Shannon divergence. After that, we adopt the proposed weighted local random walk with restart algorithm to analyze the implicit link relationships between the users in the local topic cliques and calculate the weighted link relationship similarity between the users. Combining the user interest topic similarity with the weighted link relationship similarity in a unified way, we get the final latent friend recommendation list. The experiments on real-world datasets demonstrate that the proposed method outperforms the state-of-the-art latent friend recommendation methods under four different types of evaluation metrics.
机译:在线社交媒体中的潜在朋友推荐很有趣,但具有挑战性,因为用户项评级和用户 - 用户关系都稀疏。在本文中,我们提出了一种新的双隐式挖掘基于挖掘的潜在朋友推荐模型,同时考虑用户的隐式兴趣主题和本地主题批变中的用户之间的隐式链路关系。具体而言,我们首先提出一种称为来自用户的所有评论的算法和来自他们的相应项目的所有标签,以了解用户的隐式兴趣主题和它们对应的主题权重,然后使用对称的jensen-shannon发散来计算用户兴趣主题相似度。之后,我们采用提出的加权本地随机散步与重启算法,分析本地主题批变中的用户之间的隐式链路关系,并计算用户之间的加权链路关系相似性。将用户兴趣主题相似于以统一的方式与加权链路关系相似性,我们得到了最终的潜在朋友推荐列表。实际数据集的实验表明,所提出的方法在四种不同类型的评估指标下表现出最先进的潜在朋友推荐方法。

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