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An exemplar model of syntactic priming.

机译:句法启动的示例模型。

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摘要

A key question in language processing is the extent to which lexical and structural processing are similar. Some exemplar models and Construction Grammar models (Fillmore et al. 1988; Kay & Fillmore 1999; Goldberg 1995; Goldberg 2006) predict similarities between lexical and syntactic processing. This thesis presents two exemplar models of syntactic production that both predict some similar processing effects for words and multi-word structures and tests their predictions for syntactic priming: the TIMBL Spreading Activation Model (TSAM; Krott et al. 2002) and the Data-Orented Parsing - Local Activation Spread Theory (DOP-LAST; inspired by Bod 1992 and Kapatsinski 2006).;Lexical production and comprehension experiments have shown that words are recognized or produced faster when preceded by another (similar) word. This phenomenon is called priming. These lexical priming experiments have shown that high frequency words are primed less by their orthographic and semantic neighbors (Scarborough et al. 1977; Forster & Davis 1984; Norris 1984; Perea & Rosa 2000). Also, the more similar the prime and target words, the greater the magnitude of the priming effect (Ratcliff & McKoon 1981). Finally, words that are orthographically (Perea & Rosa 2000) or semantically (Anaki & Henik 2003) similar to many other words have less of a priming effect.;Bock (1986) first showed that a priming effect occurs on the scale of syntactic structures, as subjects are more likely to produce a structure when they have processed it previously. For example, a speaker is more likely to produce a prepositional dative after hearing another prepositional dative. Exemplar and construction models of representation predict that structural priming should show the same frequency and similarity effects as lexical priming, because essentially the same representations are being accessed. In this thesis, a data set of the passive alternation was created using spoken data, and priming factors were added to the Bresnan et al. (2007) database of ditransitives in order to test the predictions of the exemplar model for syntactic priming. The data were analyzed using mixed-model logistic regression.;Inverse frequency effects were found in structural priming similar those in lexical priming: prime structures that contain verbs that occur very frequently in that structure are less likely to prime it. This effect was found in priming of passives (p 0.05) and ditransitives (p 0.04).;Similarity between prime and target was also found to increase the likelihood of structural repetition, using a similarity measure from the Tilburg Memory-Based Learning model (Daelemans et al. 2001). This metric was found to significantly predict likelihood of priming in both passives (p .001) and ditransitives (p .005).;Finally, the effect of neighborhood density on structural priming was tested in both passives and ditransitives. Primes were defined to be in dense neighborhoods if their verbs occur in many different constructions, while low density constructions have verbs that occur in few constructions. There was no effect of neighborhood density in either data set (p > .25).;These studies provide further evidence that structural priming is sensitive to the same factors as lexical priming: high frequency structures prime less, and more similar prime and target structures prime more. This is consistent with exemplar and Construction Grammar models of representation, because it indicates that lexical production and syntactic production are similar processes with respect to frequency and similarity. These results also support the TSAM model, because it does not predict the neighborhood density effects that DOP-LAST does, and these effects are not found in the data.
机译:语言处理中的一个关键问题是词汇和结构处理的相似程度。一些示例模型和构造语法模型(Fillmore等,1988; Kay&Fillmore,1999; Goldberg,1995; Goldberg,2006)预测了词汇加工和句法加工之间的相似性。本文提出了两种句法产生的典范模型,它们都预测了单词和多词结构的相似处理效果,并测试了它们对句法启动的预测:TIMBL扩展激活模型(TSAM; Krott等,2002)和数据来源的解析-局部激活扩散理论(DOP-LAST;受Bod 1992和Kapatsinski 2006启发)。词汇产生和理解实验表明,在出现另一个(相似)单词之前,单词的识别或生成速度更快。这种现象称为启动。这些词汇启动实验表明,高频单词的拼写和语义邻居的启动次数较少(Scarborough等,1977; Forster和Davis,1984; Norris,1984; Perea和Rosa,2000)。同样,素词和目标词越相似,引词效果的幅度就越大(Ratcliff&McKoon 1981)。最后,与许多其他单词在正字法(Perea&Rosa 2000)或语义(Anaki&Henik 2003)上的单词相比,它们的启动效果更差。; Bock(1986)首先表明,启动效果发生在句法结构的规模上,因为对象在先前处理结构时更有可能产生结构。例如,说话者在听完另一个介词介词后更有可能产生介词介词。表示的示例模型和构造模型预测,结构启动应显示与词汇启动相同的频率和相似性效果,因为基本上访问了相同的表示。在这篇论文中,使用口头数据创建了一个被动交替的数据集,并且将启动因子添加到了Bresnan等人的论文中。 (2007年)的双及物数据库,以测试句法启动的范例模型的预测。使用混合模型逻辑回归分析了数据。在结构启动中发现了逆频率效应,与词汇启动中的反频率效应相似:包含在该结构中频繁出现的动词的启动结构不太可能对其进行启动。在被动(p <0.05)和双及物(p <0.04)的启动中发现了这种效果。使用基于Tilburg基于记忆的学习模型的相似性度量,发现启动和目标之间的相似性也增加了结构重复的可能性(Daelemans et al。2001)。发现该度量标准可显着预测被动式(p <.001)和双传递性(p <.005)中引发的可能性。最后,在被动式和双传递性中都测试了邻域密度对结构引发的影响。如果质数的动词出现在许多不同的构造中,则将它们定为密集的邻域,而低密度构造的动词出现在少数构造中。在这两个数据集中,邻域密度都没有影响(p> .25)。这些研究提供了进一步的证据,表明结构启动与词汇启动对相同的因素敏感:高频结构启动较少,而启动结构和目标结构更相似补充更多。这与表示形式的示例和构造语法模型相一致,因为它表明词汇生成和句法生成在频率和相似性方面是相似的过程。这些结果也支持TSAM模型,因为它无法预测DOP-LAST的邻域密度效应,并且在数据中未发现这些效应。

著录项

  • 作者

    Snider, Neal.;

  • 作者单位

    Stanford University.;

  • 授予单位 Stanford University.;
  • 学科 Language Linguistics.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 语言学;
  • 关键词

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