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An Attention-Based Friend Recommendation Model in Social Network

机译:社交网络中的基于关注的朋友推荐模型

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摘要

In social networks, user attention affects the user's decision-making, resulting in a performance alteration of the recommendation systems. Existing systems make recommendations mainly according to users' preferences with a particular focus on items. However, the significance of users' attention and the difference in the influence of different users and items are often ignored. Thus, this paper proposes an attention-based multi-layer friend recommendation model to mitigate information overload in social networks. We first constructed the basic user and item matrix via convolutional neural networks (CNN). Then, we obtained user preferences by using the relationships between users and items, which were later inputted into our model to learn the preferences between friends. The error performance of the proposed method was compared with the traditional solutions based on collaborative filtering. A comprehensive performance evaluation was also conducted using large-scale real-world datasets collected from three popular location-based social networks. The experimental results revealed that our proposal outperforms the traditional methods in terms of recommendation performance.
机译:在社交网络中,用户注意力影响用户的决策,从而导致推荐系统的性能更改。现有系统主要根据用户的偏好提出建议,特别关注物品。然而,用户注意力的重要性和不同用户和物品的影响的差异通常被忽略。因此,本文提出了基于关注的多层朋友推荐模型,以减轻社交网络中的信息过载。我们首先通过卷积神经网络(CNN)构建基本用户和项目矩阵。然后,我们通过使用用户和项目之间的关系获得用户偏好,后来输入了我们的模型以了解朋友之间的偏好。将所提出的方法的误差性能与基于协同滤波的传统解决方案进行了比较。还使用从基于三个受欢迎的社交网络收集的大型现实世界数据集进行了全面的绩效评估。实验结果表明,我们的提案在推荐绩效方面取得了传统方法。

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