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A Corpus-Based Method to Improve Feature-Based Semantic Role Labeling

机译:基于语料库的改进基于特征的语义角色标记的方法

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摘要

This paper proposes a novel corpus-based method for feature-based semantic role labeling (SRL). The method first constructs a number of combined features based on basic features and can rapidly discern the discriminative combined features that will improve the performance of SRL. According to the distribution in the corpus, we define a statistical quantity that can efficiently measure the classifying capacity of the combining feature, and then retain the high-value combined features for the later classification. The experiments on Chinese Proposition Bank (CPB) corpus show the method can improve the F-score of SRL by more than one percent.
机译:本文提出了一种新的基于语料库的方法,用于基于特征的语义角色标记(SRL)。该方法首先基于基本特征构造许多组合特征,并且可以快速辨别将改善SRL性能的区分性组合特征。根据语料库中的分布,我们定义了一个统计量,可以有效地测量组合特征的分类能力,然后保留高价值组合特征以用于以后的分类。在中国建议书银行(CPB)语料库上进行的实验表明,该方法可以将SRL的F分数提高超过1%。

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