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Deep dependencies from context-free statistical parsers: correcting the surface dependency approximation

机译:免于无背景统计解析器的深度依赖性:校正表面依赖性近似

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We present a linguistically-motivated algorithm for reconstructing nonlocal dependency in broad-coverage context-free parse trees derived from treebanks. We use an algorithm based on loglinear classifiers to augment and reshape context-free trees so as to reintroduce underlying nonlocal dependencies lost in the context-free approximation. We find that our algorithm compares favorably with prior work on English using an existing evaluation metric, and also introduce and argue for a new dependency-based evaluation metric. By this new evaluation metric our algorithm achieves 60% error reduction on gold-standard input trees and 5% error reduction on state-of-the-art machine-parsed input trees, when compared with the best previous work. We also present the first results on nonlocal dependency reconstruction for a language other than English, comparing performance on English and German. Our new evaluation metric quantitatively corroborates the intuition that in a language with freer word order, the surface dependencies in context-free parse trees are a poorer approximation to underlying dependency structure.
机译:我们提出了一种用于重建从树木班班的广泛覆盖的无线上下文解析树中重建非识别依赖性的语言动力算法。我们使用基于Loglinear Classifiers的算法来增强和重塑无内部树木,以便在无与伦比的无与伦比的近似下重新引入底层非函数依赖项。我们发现我们的算法使用现有的评估指标与英语上的先前工作相比,并介绍并争论基于新的基于依赖性评估度量。通过这种新的评估度量,我们的算法达到了60%的金标输入树上的误差,而最先进的机器解析了5%的误差减少了5%的误差。我们还提出了英语以外的语言的非本体依赖重建的第一个结果,比较英语和德语的性能。我们的新评估度量定量地证实了以具有自由字顺序的语言的直觉,无论无内容解析树中的表面依赖性是差异依赖结构的较差近似。

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