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Can readers understand their profiles? A study of human involvement in reader profiling

机译:读者可以了解他们的档案吗?人类参与读者分析的研究

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The aim in information filtering is to provide users with a personalised selection of information, based on a description of their interest profile. In some domains, users will want access to such profiles even if they are system generated. We have performed a study of the effects of combining automatic profiling with explicit user involvement. Firstly, we wanted to explore if a machine-learned profile would benefit from being based on an initial explicit user profile. Secondly, we tested if profiles that provided better filtering also were better liked by users. Finally, we tested if users could make improvements to machine-learned profiles. We found that the initial setup of a personal profile was effective, and yielded performance improvements even after feedback training. However, the study showed no correlation between users ratings of profiles and their filtering performance, and neither did user modifications to learned profiles improve filtering performance.
机译:信息过滤的目的是基于其兴趣简介的描述为用户提供个性化的信息选择。在某些域中,即使它们是生成的系统,用户也希望访问此类配置文件。我们已经研究了与明确的用户参与相结合的自动分析的影响。首先,我们想探索机器学习的配置文件是否会受益于基于初始显式用户配置文件。其次,我们测试了提供更好过滤的配置文件也被用户更好地喜欢。最后,我们测试了用户是否可以改进机器学习的配置文件。我们发现,个人资料的初始设置是有效的,即使在反馈培训之后,也会产生性能改进。然而,该研究表明,用户对概况的评级和过滤性能之间没有相关性,并且用户修改也没有学习的配置文件改善过滤性能。

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