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Modelling a subregular bias in phonological learning with Recurrent Neural Networks

机译:用经常性神经网络建模语音学习中的分区偏见

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A number of experiments have demonstrated what seems to be a bias in human phonological learning for patterns that are simpler according to Formal Language Theory (Finley and Badecker 2008; Lai 2015; Avcu 2018). This paper demonstrates that a sequence-to-sequence neural network (Sutskever et al. 2014), which has no such restriction explicitly built into its architecture, can successfully capture this bias. These results suggest that a bias for patterns that are simpler according to Formal Language Theory may not need to be explicitly incorporated into models of phonological learning.
机译:许多实验表明,根据正式语言理论(FINLEY和BOADECECKER 2008; LAI 2015; AVCU 2018)更简单的模式是人类语音学习的偏差。 本文展示了一个序列到序列的神经网络(Sutskever等,2014),其没有明确地建立在其体系结构中的这种限制,可以成功捕获这种偏差。 这些结果表明,根据正式语言理论更简单的模式的偏差可能不需要明确地纳入语音学习的模型中。

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