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Individual Differences in Learning Abilities Impact Structure Addition: Better Learners Create More Structured Languages

机译:学习能力的个人差异影响结构增加:更好的学习者创建更多结构化语言

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Over the last decade, iterated learning studies have provided compelling evidence for the claim that linguistic structure can emerge from non-structured input, through the process of transmission. However, it is unclear whether individuals differ in their tendency to add structure, an issue with implications for understanding who are the agents of change. Here, we identify and test two contrasting predictions: The first sees learning as a pre-requisite for structure addition, and predicts a positive correlation between learning accuracy and structure addition, whereas the second maintains that it is those learners who struggle with learning and reproducing their input who add structure to it. This prediction is hard to test in standard iterated learning paradigms since each learner is exposed to a different input, and since structure and accuracy are computed using the same test items. Here, we test these contrasting predictions in two experiments using a one-generation artificial language learning paradigm designed to provide independent measures of learning accuracy and structure addition. Adults (N = 48 in each study) were exposed to a semi-regular language (with probabilistic structure) and had to learn it: Learning was assessed using seen items, whereas structure addition was calculated over unseen items. In both studies, we find a strong positive correlation between individuals' ability to learn the language and their tendency to add structure to it: Better learners also produced more structured languages. These findings suggest a strong link between learning and generalization. We discuss the implications of these findings for iterated language models and theories of language change more generally.
机译:在过去十年中,迭代学习研究已经为语言结构通过传输过程提供了语言结构的令人信服的证据。但是,目前尚不清楚个人在增加结构的倾向方面是否有所不同,这是一个关于理解的问题的问题是谁是变革的代理人。在这里,我们识别和测试两个对比预测:第一个看到学习作为结构添加的先决条件,并预测学习准确性和结构之间的正相关性,而第二个认为是那些与学习和再现斗争的学习者他们的意见将结构添加到它。在标准迭代的学习范例中难以测试这种预测,因为每个学习者暴露于不同的输入,并且由于使用相同的测试项目计算结构和精度。在这里,我们使用一代人工语言学习范例在两个实验中测试这些对比预测,旨在提供独立的学习精度和结构添加措施。成年人(每项研究中的N = 48)暴露于半常规语言(具有概率结构),并且必须学习:使用所看到的项目进行评估,而结构添加是通过未经看的项目计算的。在这两项研究中,我们在学习语言学习语言的能力与向其添加结构的倾向之间找到了强烈的正相关性:更好的学习者还制作了更多结构化语言。这些调查结果表明了学习和泛化之间的强烈联系。我们讨论了这些发现对迭代语言模型的影响和语言的理论更加普遍。

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