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Semantic Role Labeling of Clinical Text: Comparing Syntactic Parsers and Features

机译:临床文本的语义角色标记:语法分析器和功能的比较

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摘要

Semantic role labeling (SRL), which extracts shallow semantic relation representation from different surface textual forms of free text sentences, is important for understanding clinical narratives. Since semantic roles are formed by syntactic constituents in the sentence, an effective parser, as well as an effective syntactic feature set are essential to build a practical SRL system. Our study initiates a formal evaluation and comparison of SRL performance on a clinical text corpus MiPACQ, using three state-of-the-art parsers, the Stanford parser, the Berkeley parser, and the Charniak parser. First, the original parsers trained on the open domain syntactic corpus Penn Treebank were employed. Next, those parsers were retrained on the clinical Treebank of MiPACQ for further comparison. Additionally, state-of-the-art syntactic features from open domain SRL were also examined for clinical text. Experimental results showed that retraining the parsers on clinical Treebank improved the performance significantly, with an optimal F1 measure of 71.41% achieved by the Berkeley parser.
机译:语义角色标记(SRL)从自由文本句子的不同表面文本形式中提取浅层语义关系表示形式,对于理解临床叙事很重要。由于语义角色是由句​​子中的句法成分形成的,因此有效的解析器以及有效的句法特征集对于构建实用的SRL系统至关重要。我们的研究使用三个最先进的解析器,Stanford解析器,Berkeley解析器和Charniak解析器,对临床文本语料库MiPACQ上的SRL性能进行了正式评估和比较。首先,使用在开放域句法语料库Penn Treebank上训练的原始解析器。接下来,这些解析器在MiPACQ的临床树库中接受了进一步的比较。此外,还对开放域SRL的最新语法功能进行了临床检查。实验结果表明,在临床Treebank上对解析器进行再培训可以显着提高性能,伯克利解析器可以实现71.41%的最佳F1度量。

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