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Collaborative Filtering Recommendation Algorithm Based on Knowledge Graph

机译:基于知识图的协同过滤推荐算法

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To solve the problem that collaborative filtering algorithm only uses the user-item rating matrix and does not consider semantic information, we proposed a novel collaborative filtering recommendation algorithm based on knowledge graph. Using the knowledge graph representation learning method, this method embeds the existing semantic data into a low-dimensional vector space. It integrates the semantic information of items into the collaborative filtering recommendation by calculating the semantic similarity between items. The shortcoming of collaborative filtering algorithm which does not consider the semantic information of items is overcome, and therefore the effect of collaborative filtering recommendation is improved on the semantic level. Experimental results show that the proposed algorithm can get higher values on precision, recall, and F-measure for collaborative filtering recommendation.
机译:为解决协同过滤算法仅使用用户项评分矩阵而不考虑语义信息的问题,提出了一种基于知识图的新型协同过滤推荐算法。使用知识图表示学习方法,该方法将现有的语义数据嵌入到低维向量空间中。它通过计算项目之间的语义相似度,将项目的语义信息整合到协同过滤推荐中。克服了不考虑项目语义信息的协同过滤算法的缺点,提高了协同过滤推荐在语义层次上的效果。实验结果表明,该算法在协同过滤推荐的精度,召回率和F-measure上具有较高的价值。

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