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Architecture of 4-way tensor factorization for context-aware recommendations

机译:用于上下文感知推荐的4向张量分解的体系结构

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Contextual information has been recognized as an important factor to consider in user-aware Recommendation Systems. Since contextual information can be used as a significant factor in modeling user behavior, various context-aware recommendation methods are proposed. However, the state-of-the-art context modeling methods treat contexts as other dimensions similar to the dimensions of users and items, and cannot extract the special semantic operation of contexts. On the other hand, some works on multi-domain relation prediction can be used for the context-aware recommendation, but they have problems in generating recommendation under a large amount of contextual information. In this paper, we propose the 4-way Tensor, a parallel tensor factorization algorithm, to accelerate the tensor factorization of large datasets to support efficient context-aware recommendations. The basic idea of this algorithm is to partition a tensor into partition and then exploit the inherent parallelism to perform tensor related operations in parallel.
机译:上下文信息已被认为是用户意识到推荐系统中考虑的重要因素。由于上下文信息可以用作建模用户行为的重要因素,因此提出了各种上下文感知推荐方法。然而,最先进的上下文建模方法将上下文视为与用户和项目的尺寸类似的其他维度,并且不能提取上下文的特殊语义操作。另一方面,在多域关系预测上的一些工作可以用于上下文感知的建议,但它们在在大量上下文信息下产生建议的问题。在本文中,我们提出了4路张量,并行张量分解算法,加速了大型数据集的张量分解,以支持有效的背景感知建议。该算法的基本思想是将张量分为分区,然后利用固有的并行性以并行执行Tensor相关操作。

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