首页> 外文会议>Annual meeting of the Association for Computational Linguistics;ACL 2011 >Integrating surprisal and uncertain-input models in online sentence comprehension: formal techniques and empirical results
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Integrating surprisal and uncertain-input models in online sentence comprehension: formal techniques and empirical results

机译:在线句子理解中整合惊奇和不确定输入模型:形式技术和实证结果

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A system making optimal use of available information in incremental language comprehension might be expected to use linguistic knowledge together with current input to revise beliefs about previous input. Under some circumstances, such an error-correction capability might induce comprehenders to adopt grammatical analyses that are inconsistent with the true input. Here we present a formal model of how such input-unfaithful garden paths may be adopted and the difficulty incurred by their subsequent disconfirmation, combining a rational noisy-channel model of syntactic comprehension under uncertain input with the surprisal theory of incremental processing difficulty. We also present a behavioral experiment confirming the key empirical predictions of the theory.
机译:可以期望一个以增量语言理解最佳地利用可用信息的系统将语言知识与当前输入一起使用,以修改有关先前输入的信念。在某些情况下,这种纠错能力可能会引起理解者采用与真实输入不一致的语法分析。在这里,我们提出了一个正式模型,该模型介绍了如何采用这种输入不忠实的花园路径以及随后的不确定性所带来的困难,将不确定输入下句法理解的合理噪声通道模型与递增处理难度的意外理论相结合。我们还提供了一个行为实验,证实了该理论的关键经验预测。

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