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User Partitioning Hybrid for Tag Recommendation

机译:用户划分混合标记推荐

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摘要

Tag recommendation is a fundamental service in today's social annotation systems, assisting users as they collect and annotate resources. Our previous work has demonstrated the strengths of a linear weighted hybrid, which weights and combines the results of simple components into a final recommendation. However, these previous efforts treated each user the same. In this work, we extend our approach by automatically discovering partitions of users. The user partitioning hybrid learns a different set of weights for these user partitions. Our rigorous experimental results show a marked improvement. Moreover, analysis of the partitions within a dataset offers interesting insights into how users interact with social annotations systems.
机译:标签推荐是当今社会注释系统中的基本服务,协助用户收集和注释资源。我们以前的工作表明了线性加权混合的优势,重量并将简单组件的结果结合成最终推荐。但是,这些以前的努力对每个用户进行了相同的。在这项工作中,我们通过自动发现用户的分区来扩展我们的方法。用户分区混合动力为这些用户分区学习不同的权重集。我们严谨的实验结果显示出明显的改善。此外,数据集中的分区分析提供有趣的见解,以如何与社会注释系统互动。

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