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From Chunks to Function-Argument Structure: A Similarity-Based Approach

机译:从块到函数参数结构:一种基于相似度的方法

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Chunk parsing has focused on the recognition of partial constituent structures at the level of individual chunks. Little attention has been paid to the question of how such partial analyses can be combined into larger structures for complete utterances. Such larger structures are not only desirable for a deeper syntactic analysis. They also constitute a necessary prerequisite for assigning function-argument structure. The present paper offers a similarity-based algorithm for assigning functional labels such as subject, object, head, complement, etc. to complete syntactic structures on the basis of pre-chunked input. The evaluation of the algorithm has concentrated on measuring the quality of functional labels. It was performed on a German and an English treebank using two different annotation schemes at the level of function-argument structure. The results of 89.73% correct functional labels for German and 90.40 % for English validate the general approach.
机译:块分析专注于在单个块级别识别部分组成结构。很少有人关注如何将这样的部分分析组合成更大的结构以表达完整的话语的问题。这样的较大结构不仅是更深入的语法分析所希望的。它们还构成分配功能参数结构的必要先决条件。本文提供了一种基于相似度的算法,用于在预分块输入的基础上分配诸如主语,宾语,头部,补语等功能标签,以完成语法结构。该算法的评估集中在测量功能标签的质量上。它是在德国和英国的树库上使用两种不同的注释方案在功能参数结构级别上执行的。 89.73%的德语正确功能标签和90.40%的英语正确功能标签的结果验证了该通用方法。

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