Journal of Language Modelling (Aug 2021)

Modelling a subregular bias in phonological learning with Recurrent Neural Networks

  • Brandon Prickett

Journal volume & issue
Vol. 9, no. 1

Abstract

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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.

Keywords