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A Mathematical Model of Prediction-Driven Instability:How Social Structure Can Drive Language Change

机译:预测驱动的不稳定性的数学模型:社会结构如何驱动语言变化

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I discuss a stochastic model of language learning and change. During a syntactic change, each speaker makes use of constructions from two different idealized grammars at variable rates. The model incorporates regularization in that speakers have a slight preference for using the dominant idealized grammar. It also includes incrementation: The population is divided into two interacting generations. Children can detect correlations between age and speech. They then predict where the population's language is moving and speak according to that prediction, which represents a social force encouraging children not to sound out-dated. Both regularization and incrementation turn out to be necessary for spontaneous language change to occur on a reasonable time scale and run to completion monotonically. Chance correlation between age and speech may be amplified by these social forces, eventually leading to a syntactic change through prediction-driven instability.
机译:我讨论了一种语言学习和变化的随机模型。在语法更改期间,每个说话者都以可变的速率使用来自两个不同的理想化语法的构造。该模型合并了正则化,因为说话者略微偏爱使用占主导地位的理想化语法。它还包括增量:种群分为两个相互影响的世代。孩子们可以发现年龄和言语之间的相关性。然后,他们预测人口语言的移动方向并根据该预测说话,这代表了一种鼓励儿童不要过时的社会力量。事实证明,自发的语言更改要在合理的时间范围内进行并单调完成,正则化和增量化都是必需的。这些社会力量可能会放大年龄和言语之间的机会相关性,最终通过预测驱动的不稳定性导致句法变化。

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