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Evaluating folksonomy information sources for genre prediction

机译:评估人物预测的人物信息源

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Automatic genre identification is a task which plays a crucial role in many domains such as automatic storytellers, recommender systems and web page topic detectors. Genre classification is especially interesting in the domain of narrative content which is characterized by a large number of ambiguous and overlapping categories. The rise in popularity of social tagging systems forms a rich source of input information which could be harnessed for this task. In this paper we investigate two different information folksonomy sources for the movie domain namely: keywords and tags, the first of which is user annotated and expert monitored whereas the latter is non-monitored. A comparison is performed to assess the efficacy of both sources in solving this multi-label classification problem and it is found that the in spite of being expert monitored and better structured, keywords are worse predictors of the genres of movies than tags in most cases.
机译:自动类型识别是一种任务,在许多域中发挥着至关重要的作用,例如自动讲述者,推荐系统和网页主题检测器。在叙事内容领域的类型,流派分类特别有趣,其特征在于大量含糊不清和重叠的类别。社交标记系统的普及的上升形成了丰富的输入信息来源,可以利用此任务。在本文中,我们调查了电影领域的两种不同信息folksomy源:关键字和标签,其中第一个是用户注释和专家监控,而后者是非监控的。进行比较以评估两个来源在解决这个多标签分类问题时的功效,并且发现尽管是专家监测和更好的结构,关键字在大多数情况下比标记更糟糕的是电影类型的预测因素。

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