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Learning simple and complex artificial grammars in the presence of a semantic reference field: effects on performance and awareness

机译:在存在语义参考域的情况下学习简单和复杂的人工语法:对性能和意识的影响

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This study investigated whether the negative effect of complexity on artificial grammar learning could be compensated by adding semantics. Participants were exposed to exemplars from a simple or a complex finite state grammar presented with or without a semantic reference field. As expected, performance on a grammaticality judgment test was higher for the simple grammar than for the complex grammar. For the simple grammar, the results also showed that participants presented with a reference field and instructed to decode the meaning of each exemplar (decoding condition) did better than participants who memorized the exemplars without semantic referents (memorize condition). Contrary to expectations, however, there was no significant difference between the decoding condition and the memorize condition for the complex grammar. These findings indicated that the negative effect of complexity remained, despite the addition of semantics. To clarify how the presence of a reference field influenced the learning process, its effects on the acquisition of two types of knowledge (first- and second-order dependencies) and on participants' awareness of their knowledge were examined. The results tentatively suggested that the reference field enhanced the learning of second-order dependencies. In addition, participants in the decoding condition realized when they had knowledge relevant to making a grammaticality judgment, whereas participants in the memorize condition demonstrated some knowledge of which they were unaware. These results are in line with the view that the reference field enhanced structure learning by making certain dependencies more salient. Moreover, our findings stress the influence of complexity on artificial grammar learning.
机译:这项研究调查了复杂性对人工语法学习的负面影响是否可以通过添加语义来弥补。通过简单的或复杂的有限状态语法(不带或不带语义参考域)向参与者展示示例。不出所料,简单语法的语法判断测试的性能要高于复杂语法。对于简单的语法,结果还显示,与参考者一起记忆无语义指称的对象(记忆条件)后,给参与者提供参考字段并被要求对每个示例的含义进行解码(解码条件)的参与者的表现要好。但是,与预期相反,复杂语法的解码条件和存储条件之间没有显着差异。这些发现表明,尽管增加了语义,但复杂性的负面影响仍然存在。为了阐明参考场的存在如何影响学习过程,研究了参考场对两种类型的知识(一阶和二阶依赖性)的获取以及参与者对其知识的认识的影响。初步的结果表明,参考领域加强了对二阶依存关系的学习。另外,解码条件的参与者在知道与进行语法判断有关的知识时就意识到了,而记忆条件的参与者表现出了他们不知道的一些知识。这些结果与以下观点相一致:参考字段通过使某些依赖性更加突出来增强结构学习。此外,我们的发现强调了复杂性对人工语法学习的影响。

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