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Mixed-complexity artificial grammar learning in humans and macaque monkeys: evaluating learning strategies

机译:人类和猕猴的混合复杂性人工语法学习:评估学习策略

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Artificial grammars (AG) can be used to generate rule-based sequences of stimuli. Some of these can be used to investigate sequence-processing computations in non-human animals that might be related to, but not unique to, human language. Previous AG learning studies in non-human animals have used different AGs to separately test for specific sequence-processing abilities. However, given that natural language and certain animal communication systems (in particular, song) have multiple levels of complexity, mixed-complexity AGs are needed to simultaneously evaluate sensitivity to the different features of the AG. Here, we tested humans and Rhesus macaques using a mixed-complexity auditory AG, containing both adjacent (local) and non-adjacent (longer-distance) relationships. Following exposure to exemplary sequences generated by the AG, humans and macaques were individually tested with sequences that were either consistent with the AG or violated specific adjacent or non-adjacent relationships. We observed a considerable level of cross-species correspondence in the sensitivity of both humans and macaques to the adjacent AG relationships and to the statistical properties of the sequences. We found no significant sensitivity to the non-adjacent AG relationships in the macaques. A subset of humans was sensitive to this non-adjacent relationship, revealing interesting between- and within-species differences in AG learning strategies. The results suggest that humans and macaques are largely comparably sensitive to the adjacent AG relationships and their statistical properties. However, in the presence of multiple cues to grammaticality, the non-adjacent relationships are less salient to the macaques and many of the humans.
机译:人工语法(AG)可用于生成基于规则的刺激序列。其中一些可用于研究非人类动物中可能与人类语言有关但并非唯一的序列处理计算。先前在非人类动物中进行的AG学习研究已使用不同的AG来分别测试特定序列加工能力。但是,鉴于自然语言和某些动物交流系统(尤其是歌曲)具有多个复杂级别,因此需要使用混合复杂性AG来同时评估对AG不同功能的敏感性。在这里,我们使用混合复杂性听觉AG(包含相邻(局部)和非相邻(长距离)关系)对人和恒河猴进行了测试。暴露于AG产生的示例性序列后,分别使用与AG一致或违反特定的相邻或非相邻关系的序列分别测试人和猕猴。我们观察到人类和猕猴对相邻AG关系的敏感性以及对序列的统计特性的跨物种对应水平。我们发现猕猴的非相邻AG关系没有显着敏感性。一小部分人对这种不相邻的关系很敏感,揭示了AG学习策略中有趣的种间差异。结果表明,人类和猕猴对相邻的AG关系及其统计特性在很大程度上具有比较敏感性。但是,在存在多种语法提示的情况下,不相邻的关系对猕猴和许多人类而言并不那么重要。

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