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Optimizing Personalized Ranking in Recommender Systems with Metadata Awareness

机译:优化具有元数据意识的推荐系统中的个性化排名

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In this paper, we propose an item recommendation algorithm based on latent factors which uses implicit feedback from users to optimize the ranking of items according to individual preferences. The novelty of the algorithm is the integration of content metadata to improve the quality of recommendations. Such descriptions are an important source to construct a personalized set of items which are meaningfully related to the user's main interests. The method is evaluated on two different datasets, being compared against another approach reported in the literature. The results demonstrate the effectiveness of supporting personalized ranking with metadata awareness.
机译:在本文中,我们提出了一种基于潜在因子的项目推荐算法,该算法使用用户隐含反馈来优化根据个人偏好的项目排名。 算法的新颖性是内容元数据的集成,以提高建议的质量。 这种描述是构造与用户主要兴趣有意义相关的个性化项目集的重要源。 该方法在两个不同的数据集上进行评估,与文献中报道的另一种方法进行比较。 结果表明,在元数据意识支持个性化排名的有效性。

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