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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >EFFICIENT COLLABORATIVE FILTERING IN CONTENT-ADDRESSABLE SPACES
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EFFICIENT COLLABORATIVE FILTERING IN CONTENT-ADDRESSABLE SPACES

机译:内容可寻址空间中的有效协作过滤

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摘要

Collaborative Filtering (CP) is currently one of the most popular and most widely used personalization techniques. It generates personalized predictions based on the assumption that users with similar tastes prefer similar items. One of the major drawbacks of the CF from the computational point of view is its limited scalability since the computational effort required by the CF grows linearly both with the number of available users and items. This work proposes a novel efficient variant of the CF employed over a multidimensional content-addressable space. The proposed approach heuristically decreases the computational effort required by the CF algorithm by limiting the search process only to potentially similar users. Experimental results demonstrate that the proposed heuristic approach is capable of generating predictions with high levels of accuracy, while significantly improving the performance in comparison with the traditional implementations of the CF.
机译:协作过滤(CP)当前是最流行和使用最广泛的个性化技术之一。它基于具有相似口味的用户喜欢相似商品的假设来生成个性化预测。从计算的角度来看,CF的主要缺点之一是其有限的可扩展性,因为CF所需的计算工作量随可用用户和项目的数量呈线性增长。这项工作提出了在多维内容可寻址空间上采用的CF的一种新型有效变体。通过将搜索过程仅限于潜在的相似用户,所提出的方法启发式地减少了CF算法所需的计算量。实验结果表明,所提出的启发式方法能够以较高的准确性生成预测,同时与传统的CF实现相比,可以显着提高性能。

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