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Sequential vs. Hierarchical Syntactic Models of Human Incremental Sentence Processing

机译:顺序与人类增量句处理的分层语法模型

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Experimental evidence demonstrates that syntactic structure influences human online sentence processing behavior. Despite this evidence, open questions remain: which type of syntactic structure best explains observed behavior-hierarchical or sequential, and lexicalized or unlexicalized? Recently, Frank and Bod (2011) find that unlexicalized sequential models predict reading times better than unlexicalized hierarchical models, relative to a baseline prediction model that takes wordlevel factors into account. They conclude that the human parser is insensitive to hierarchical syntactic structure. We investigate these claims and find a picture more complicated than the one they present. First, we show that incorporating additional lexical n-gram probabilities estimated from several different corpora into the baseline model of Frank and Bod (2011) eliminates all differences in accuracy between those unlexicalized sequential and hierarchical models. Second, we show that lexicalizing the hierarchical models used in Frank and Bod (2011) significantly improves prediction accuracy relative to the unlexicalized versions. Third, we show that using stateof-the-art lexicalized hierarchical models further improves prediction accuracy. Our results demonstrate that the claim of Frank and Bod (2011) that sequential models predict reading times better than hierarchical models is premature, and also that lexicalization matters for prediction accuracy.
机译:实验证据表明句法结构影响人类在线句子处理行为。尽管有这种证据,但开放的问题仍然存在:哪种类型的句法结构最能解释观察到的行为 - 层次或顺序,以及lexicalized或不合适的?最近,弗兰克和BOD(2011)发现,相对于考虑WordLevel因素的基线预测模型,不合格化的顺序模型预测读取时间更好地读取了不合说的分层模型。他们得出结论,人解析器对分层句法结构不敏感。我们调查这些索赔,并找到比他们所在的文件更复杂的图片。首先,我们表明,将额外的词汇N-GRAM概率纳入了几种不同的Corpora估计到Frank和Bod(2011)的基线模型中,消除了那些不合格化的顺序和分层模型之间的准确性的所有差异。其次,我们表明,弗兰克和BOD(2011)中使用的分层模型的词汇化模型显着提高了相对于不合格化的版本的预测准确性。第三,我们表明,使用Stateof-Art的词汇化分层模型进一步提高了预测准确性。我们的结果表明,弗兰克和BOD的索赔(2011)该顺序模型预测比分级模型更好的阅读时间是早产,并且还为预测准确性的遗传化问题。

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