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Learning Noun-Modifier Semantic Relations with Corpus-based and WordNet-based Features

机译:学习基于语料库和基于Wordnet的特征的名词修饰符语义关系

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We study the performance of two representations of word meaning in learning noun-modifier semantic relations. One representation is based on lexical resources, in particular WordNet, the other - on a corpus. We experimented with decision trees, instance-based learning and Support Vector Machines. All these methods work well in this learning task. We report high precision, recall and F-score, and small variation in performance across several 10-fold cross-validation runs. The corpus-based method has the advantage of working with data without word-sense annotations and performs well over the baseline. The WordNet-based method, requiring word-sense annotated data, has higher precision.
机译:我们研究了学习名词 - 修改论语义关系中的两个表示意义的两个表示的表现。一个表示基于词汇资源,特别是Wordnet,另一个 - 在语料库上。我们尝试了决策树,基于实例的学习和支持矢量机器。所有这些方法在这项学习任务中都很好。我们报告了高精度,召回和F分,并且在几个10倍交叉验证运行中的性能变化小。基于语料库的方法具有与没有字感注释的数据一起使用的数据,并在基线上执行良好。基于Wordnet的方法,需要Word-Sense Annotated Data,具有更高的精度。

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