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Personalized Recommendation Based on Contextual Awareness and Tensor Decomposition

机译:基于上下文感知和张量分解的个性化推荐

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In order to solve users' rating sparsely problem existing in present recommender systems, this article proposes a personalized recommendation algorithm based on contextual awareness and tensor decomposition. Via this algorithm, it was first constructed two third-order tensors to represent six types of entities, including the user-user-item contexts and the item-item-user contexts. And then, this article uses a high order singular value decomposition method to mine the potential semantic association of the two third-order tensors above. Finally, the resulting tensors were combined to reach the recommendation list to respond the users' personalized query requests. Experimental results show that the proposed algorithm can effectively improve the effectiveness of the recommendation system. Especially in the case of sparse data, it can significantly improve the quality of the recommendation.
机译:为了解决当前推荐系统中用户评分稀疏的问题,本文提出了一种基于上下文感知和张量分解的个性化推荐算法。通过该算法,首先构造了两个三阶张量来表示六种类型的实体,包括用户-用户-项目上下文和项目-项目-用户上下文。然后,本文使用高阶奇异值分解方法来挖掘上述两个三阶张量的潜在语义关联。最后,将得到的张量组合起来以到达推荐列表,以响应用户的个性化查询请求。实验结果表明,该算法可以有效提高推荐系统的有效性。特别是在数据稀疏的情况下,它可以显着提高建议的质量。

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