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Preserving Recommender Accuracy and Diversity in Sparse Datasets

机译:在稀疏数据集中保留推荐人的准确性和多样性

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摘要

Recent research has shown that a case-based perspective on collaborative filtering for recommendation can provide significant benefits in decision support accuracy over traditional collaborative techniques, particularly as dataset sparsity increases. These benefits derive both from the use of more sophisticated case-based similarity metrics and from the proactive maintenance of item similarity knowledge using data mining. This paper presents a natural next step in the work by validating these findings in the context of more complex models of collaborative filtering, as well as by demonstrating that such techniques also preserve recommendation diversity.
机译:最近的研究表明,基于案例的协作过滤推荐视图可以提供优于传统协作技术的决策支持准确性显着优势,尤其是随着数据稀疏性的提高。这些好处既得益于使用更复杂的基于案例的相似性度量,也得益于使用数据挖掘主动维护项目相似性知识。本文通过在更复杂的协作过滤模型的背景下验证这些发现,以及通过证明此类技术也保留了推荐多样性,提出了工作中自然的下一步。

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