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Enhancing memory-based collaborative filtering for group recommender systems

机译:增强针对团体推荐系统的基于内存的协作过滤

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摘要

Memory-based collaborating filtering techniques are widely used in recommender systems. They are based on full initial ratings in a user-item matrix. However, most of the time in group recommender systems, this matrix is sparse and users' preferences are unknown. This deficiency may make memory-based collaborative filtering unsuitable for group recommender systems. This paper, improves memory-based techniques for group recommendation systems by resolving the data sparsity problem. The core of the proposed method is based on a support vector machine learning model that computes similarities between items. This method employs calculated similarities and enhances basic memory-based techniques. Experiments demonstrate that the proposed method overcomes the memory-based techniques. It also indicates that the presented work outperforms the latent factor approach, which is very efficient in sparse conditions. Finally, it is indicated that the proposed method gives a better performance than existing approaches on generating group recommendations.
机译:基于内存的协作过滤技术广泛用于推荐系统。它们基于用户项矩阵中的完整初始评分。但是,在大多数情况下,在组推荐系统中,此矩阵很少,并且用户的偏好未知。这种缺陷可能会使基于内存的协作筛选不适合组推荐系统。本文通过解决数据稀疏性问题,改进了用于组推荐系统的基于内存的技术。该方法的核心是基于支持向量机学习模型,该模型计算项目之间的相似度。此方法采用计算出的相似度并增强了基于内存的基本技术。实验表明,该方法克服了基于内存的技术。这也表明,所提出的工作优于潜在因子方法,该方法在稀疏条件下非常有效。最后,表明所提出的方法在生成小组推荐方面比现有方法具有更好的性能。

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