首页> 外文会议>40th Annual Meeting of the Association for Computational Linguistics, Jul 7-12, 2002, Philadelphia, Pennsylvania, USA >Parsing the Wall Street Journal using a Lexical-Functional Grammar and Discriminative Estimation Techniques
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Parsing the Wall Street Journal using a Lexical-Functional Grammar and Discriminative Estimation Techniques

机译:使用词汇功能语法和判别估计技术解析《华尔街日报》

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We present a stochastic parsing system consisting of a Lexical-Functional Grammar (LFG), a constraint-based parser and a stochastic disambiguation model. We report on the results of applying this system to parsing the UPenn Wall Street Journal (WSJ) treebank. The model combines full and partial parsing techniques to reach full grammar coverage on unseen data. The treebank annotations are used to provide partially labeled data for discriminative statistical estimation using exponential models. Disambiguation performance is evaluated by measuring matches of predicate-argument relations on two distinct test sets. On a gold standard of manually annotated f-structures for a subset of the WSJ treebank, this evaluation reaches 79% F-score. An evaluation on a gold standard of dependency relations for Brown corpus data achieves 76% F-score.
机译:我们提出了一种随机解析系统,该系统由词法功能语法(LFG),基于约束的解析器和随机消歧模型组成。我们报告使用此系统解析UPenn华尔街日报(WSJ)树库的结果。该模型结合了全部和部分解析技术,可以对看不见的数据进行完整的语法覆盖。树库批注用于提供部分标记的数据,以便使用指数模型进行判别统计估计。通过在两个不同的测试集上测量谓词-自变量关系的匹配度来评估歧义消除性能。在WSJ树库子集的手动注释f结构的黄金标准下,此评估达到了79%的F分数。对布朗语料库数据的依存关系的黄金标准的评估获得了76%的F评分。

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