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Selecting Keywords for Content Based Recommendation

机译:为基于内容的推荐选择关键字

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The continued growth of online content makes personalized recommendation an increasingly important tool for media consumption. While collaborative filtering techniques have shown to be very successful in stable collections, content based approaches are necessary for recommending new items. Content based recommendation uses the similarity between new items and consumed items to predict whether a new item is interesting for the user. The similarity is computed by comparing the content or the meta-data of the items. In this paper we consider recommendation of TV-broadcasts for which meta-data and synopses are available. We thereby concentrate on the new item problem. We investigate the value of different types of meta-data provided by the broadcaster or extracted from synopsis. We show that extracted keywords are better suited for recommendation than manually assigned keywords. Furthermore we show that the number of keywords used is of great importance. Using a rather small number of keywords to present an item yields the best results for recommendation.
机译:在线内容的持续增长使个性化推荐成为媒体消费中越来越重要的工具。尽管协作过滤技术已证明在稳定的收藏中非常成功,但是基于内容的方法对于推荐新项目很有必要。基于内容的推荐使用新项目和消费项目之间的相似性来预测新项目是否对用户感兴趣。通过比较项目的内容或元数据来计算相似度。在本文中,我们考虑对元数据和大纲可用的电视广播的推荐。因此,我们专注于新项目问题。我们调查了广播公司提供或从提要中提取的不同类型的元数据的价值。我们显示,与手动分配的关键字相比,提取的关键字更适合推荐。此外,我们表明使用的关键字数量非常重要。使用数量很少的关键字来呈现项目会产生最佳的推荐结果。

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