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Semantics Boosts Syntax in Artificial Grammar Learning Tasks With Recursion

机译:语义通过递归提高人工语法学习任务的语法

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Center-embedded recursion (CER) in natural language is exemplified by sentences such as "The malt that the rat ate lay in the house." Parsing center-embedded structures is in the focus of attention because this could be one of the cognitive capacities that make humans distinct from all other animals. The ability to parse CER is usually tested by means of artificial grammar learning (AGL) tasks, during which participants have to infer the rule from a set of artificial sentences. One of the surprising results of previous AGL experiments is that learning CER is not as easy as had been thought. We hypothesized that because artificial sentences lack semantic content, semantics could help humans learn the syntax of center-embedded sentences. To test this, we composed sentences from 4 vocabularies of different degrees of semantic content due to 3 factors (familiarity, meaning of words, and semantic relationship between words). According to our results, these factors have no effect one by one but they make learning significantly faster when combined. This leads to the assumption that there were different mechanisms at work when CER was parsed in natural and in artificial languages. This finding questions the suitability of AGL tasks with artificial vocabularies for studying the learning and processing of linguistic CER.
机译:自然语言的中心嵌入递归(CER)以诸如“老鼠吃的麦芽躺在房子里”之类的句子为例。解析中心嵌入式结构是关注的焦点,因为这可能是使人类与所有其他动物区分开的认知能力之一。解析CER的能力通常通过人工语法学习(AGL)任务进行测试,在此过程中,参与者必须从一组人工句子中推断规则。以前的AGL实验令人惊讶的结果之一是,学习CER并不像想象的那么容易。我们假设,由于人工句子缺少语义内容,因此语义可以帮助人们学习中心嵌入句子的语法。为了对此进行测试,我们根据3个因素(熟悉程度,单词的含义以及单词之间的语义关系)从4个不同语义内容的词汇中组成了句子。根据我们的结果,这些因素没有一个接一个的作用,但结合起来使学习速度明显加快。这导致一个假设,即以自然语言和人工语言解析CER时,存在着不同的工作机制。这一发现对带有人工词汇的AGL任务是否适合研究语言CER的学习和处理提出了质疑。

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