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Improving Case-Based Recommendation A Collaborative Filtering Approach

机译:改进基于案例的推荐协作过滤方法

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Data Mining, or Knowledge Discovery as it is also known, is becoming increasingly useful in a wide variety of applications. In the following paper, we look at its use in combating some of the traditional issues faced with rec-ommender systems. We discuss our ongoing work which aims to enhance the performance of PTV, an applied recommender system working in the TV listings domain. This system currently combines the results of separate user-based collaborative and case-based components to recommend programs to users. Our extension to this idea operates on the theory of developing a case-based view of the collaborative component itself. By using data mining techniques to extract relationships between programme items, we can address the sparsity/maintenance problem. We also adopt a unique approach to recommendation ranking which combines user similarities and item similarities to provide more effective recommendation orderings. Experimental results corroborate our ideas, demonstrating the effectiveness of data mining in improving recommender systems by providing similarity knowledge to address sparsity, both at user-based recommendation level and recommendation ranking level.
机译:数据挖掘(也称为知识发现)在各种应用程序中正变得越来越有用。在下面的文章中,我们将探讨其在解决直肠癌治疗系统所面临的一些传统问题上的用途。我们讨论了我们正在进行的工作,旨在提高PTV的性能,PTV是在电视列表领域中工作的应用推荐系统。该系统当前将基于用户的协作和基于案例的单独组件的结果组合在一起,以向用户推荐程序。我们对这一想法的扩展基于为协作组件本身开发基于案例的视图的理论。通过使用数据挖掘技术来提取程序项之间的关系,我们可以解决稀疏性/维护性问题。我们还采用了一种独特的推荐排名方法,该方法结合了用户相似度和项目相似度,以提供更有效的推荐顺序。实验结果证实了我们的想法,通过提供基于用户的推荐级别和推荐排名级别的相似性知识来解决稀疏性,证明了数据挖掘在改进推荐系统中的有效性。

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