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Language Models for Cloze Task Answer Generation in Russian

机译:俄语完形填空任务答案生成的语言模型

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Linguistics predictability is the degree of confidence in which language unit (word, part of speech, etc.) will be the next in the sequence. Experiments have shown that the correct prediction simplifies the perception of a language unit and its integration into the context. As a result of an incorrect prediction, language processing slows down. Currently, to get a measure of the language unit predictability, a neurolinguistic experiment known as a cloze task has to be conducted on a large number of participants. Cloze tasks are resource-consuming and are criticized by some researchers as an insufficiently valid measure of predictability. In this paper, we compare different language models that attempt to simulate human respondents' performance on the cloze task. Using a language model to create cloze task simulations would require significantly less time and conduct studies related to linguistic predictability.
机译:语言学的可预测性是对语言单元(单词,词性等)在序列中的下一个单元的置信度。实验表明,正确的预测可以简化对语言单元的感知,并将其整合到上下文中。由于错误的预测,语言处理会变慢。当前,为了测量语言单元的可预测性,必须在大量参与者上进行被称为完工任务的神经语言实验。完形填空任务很耗资源,并且被一些研究人员批评为可预测性的有效度量不足。在本文中,我们比较了不同的语言模型,这些模型试图模拟人类受访者在完工任务上的表现。使用语言模型创建完形填空任务模拟将大大减少时间,并进行与语言可预测性相关的研究。

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