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

机译:通过基于语料库和基于WordNet的功能学习名词修饰语语义关系

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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:我们研究了词义的两种表示形式在学习名词修饰语语义关系中的性能。一种表示法基于词法资源,尤其是WordNet,另一种表示法基于语料库。我们尝试了决策树,基于实例的学习和支持向量机。所有这些方法都可以很好地完成这项学习任务。我们报告了高精度,召回率和F得分,并且在几次10倍交叉验证运行中,性能均出现了很小的变化。基于语料库的方法的优势是无需词义注释即可处理数据,并且在基线上表现良好。基于WordNet的方法需要带有词义注释的数据,因此具有较高的精度。

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