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The proper treatment of language acquisition and change in a population setting

机译:在人口环境中正确对待语言习得和变化

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摘要

Language acquisition maps linguistic experience, primary linguistic data (PLD), onto linguistic knowledge, a grammar. Classically, computational models of language acquisition assume a single target grammar and one PLD source, the central question being whether the target grammar can be acquired from the PLD. However, real-world learners confront populations with variation, i.e., multiple target grammars and PLDs. Removing this idealization has inspired a new class of population-based language acquisition models. This paper contrasts 2 such models. In the first, iterated learning (IL), each learner receives PLD from one target grammar but different learners can have different targets. In the second, social learning (SL), each learner receives PLD from possibly multiple targets, e.g., from 2 parents. We demonstrate that these 2 models have radically different evolutionary consequences. The IL model is dynamically deficient in 2 key respects. First, the IL model admits only linear dynamics and so cannot describe phase transitions, attested rapid changes in languages over time. Second, the IL model cannot properly describe the stability of languages over time. In contrast, the SL model leads to nonlinear dynamics, bifurcations, and possibly multiple equilibria and so suffices to model both the case of stable language populations, mixtures of more than 1 language, as well as rapid language change. The 2 models also make distinct, empirically testable predictions about language change. Using historical data, we show that the SL model more faithfully replicates the dynamics of the evolution of Middle English.
机译:语言习得将语言经验,主要语言数据(PLD)映射到语言知识,语法上。传统上,语言习得的计算模型假设一个目标语法和一个PLD来源,中心问题是目标语法是否可以从PLD获得。但是,现实世界中的学习者面对的人群是多种多样的,即多种目标语法和PLD。消除这种理想化启发了一种新型的基于人群的语言习得模型。本文对比了两个这样的模型。在第一个迭代学习(IL)中,每个学习者都从一个目标语法接收PLD,但是不同的学习者可以有不同的目标。在第二种社会学习(SL)中,每个学习者从可能多个目标(例如,从2个父母那里)获得PLD。我们证明这两个模型具有根本不同的进化结果。 IL模型在两个关键方面存在动态缺陷。首先,IL模型仅允许线性动力学,因此无法描述相变,证明了语言随时间的快速变化。其次,IL模型无法正确描述语言随时间的稳定性。相比之下,SL模型会导致非线性动力学,分叉,并可能导致多重均衡,因此足以对稳定语言群体,一种以上语言的混合以及快速语言变化的情况进行建模。这两个模型还对语言变化做出了独特的,可凭经验检验的预测。使用历史数据,我们显示SL模型更忠实地复制了中古英语演变的动力。

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