https://irojournals.com/aicn/AllVolumes.html

Li Yang-yang, Wang Ya-jun, Zhang Mi-yuan
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Abstract

Most of the traditional recommendation algorithm models are recommended based on the user's own historical preferences, although it can recommend POI for users to a certain extent. But in real life, people are more willing to ask their friends what they think when they have a difficult decision. Therefore, a word2vec-based social relationship point of interest recommendation model (W-SimTru) is proposed, which combines the similarity of friends based on cosine similarity with the friend trust recommendation algorithm based on TF-IDF to improve the model recommendation effect. In addition, before modeling the similarity of users, word2vec is used to process the user's historical check-in behavior to solve the problem of inaccurate recommendation due to sparse check-in data. Finally, experiments are carried out on three datasets of Los Angeles, Washington and NYC in Gowalla, and the experimental results show that the proposed W-SimTru recommendation algorithm outperforms the algorithms of the three comparative experiments.
https://irojournals.com/aicn/AllVolumes.html
传统的推荐算法模型虽然可以在一定程度上为用户推荐POI,但大多数都是基于用户自身的历史偏好进行推荐的。但在现实生活中,当人们面临一个艰难的决定时,他们更愿意询问朋友的想法。为此,提出了一种基于word2vec的社会关系兴趣点推荐模型(W-SimTru),该模型将基于余弦相似度的朋友相似度与基于TF-IDF的朋友信任推荐算法相结合,提高了模型推荐效果。此外,在对用户相似度建模之前,使用word2vec对用户的历史签入行为进行处理,解决签入数据稀疏导致推荐不准确的问题。最后,在Gowalla的洛杉矶、华盛顿和纽约市三个数据集上进行了实验,实验结果表明,本文提出的W-SimTru推荐算法优于三个对比实验的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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