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引用次数: 0

摘要

本文研究了一种融合用户兴趣的微博推荐算法。在基于内容相似度推荐的算法中,LDA算法是应用最广泛、最经典的算法之一。因此,本文使用LDA算法挖掘用户兴趣分布,并使用余弦相似度算法计算待推荐的一般微博与用户兴趣之间的相似度。本文提出的算法是基于语义层面考虑用户兴趣的相似度,然后考虑基于关注关系的社会关系的相似度,从而达到更好的推荐效果。为了验证该模型,对微博数据进行了仿真。精度比以前高。
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A Weibo Recommendation Algorithm Integrating User Interests
A Weibo recommendation algorithm integrating user interests is studied in this manuscript. Among the algorithms based on content similarity recommendation, the LDA algorithm is one of the most used and classic algorithms. Therefore, this paper uses the LDA algorithm to mine the user interest distribution and uses the cosine similarity algorithm to calculate the similarity between the general microblog to be recommended and the user's interest. The proposed algorithm is designed by considering the similarity of user interest based on the semantic level and the similarity of the social relationship based on the follow relationship are then considered, a better recommendation effect can be achieved. To validate the model, the proposed algorithm is simulated on the data collected from the Weibo. The accuracy is higher than before.
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