A hierarchical Bayesian model for syntactic priming
Abstract
The effect of syntactic priming exhibits three well-documented empirical properties: the lexical boost, the inverse frequency effect, and the asymmetrical decay. We aim to show how these three empirical phenomena can be reconciled in a general learning framework, the hierarchical Bayesian model (HBM). The model represents syntactic knowledge in a hierarchical structure of syntactic statistics, where a lower level represents the verb-specific biases of syntactic decisions, and a higher level represents the abstract bias as an aggregation of verb-specific biases. This knowledge is updated in response to experience by Bayesian inference. In simulations, we show that the HBM captures the above-mentioned properties of syntactic priming. The results indicate that some properties of priming which are usually explained by a residual activation account can also be explained by an implicit learning account. We also discuss the model's implications for the lexical basis of syntactic priming.
Keywords
Cite
@article{arxiv.2405.15964,
title = {A hierarchical Bayesian model for syntactic priming},
author = {Weijie Xu and Richard Futrell},
journal= {arXiv preprint arXiv:2405.15964},
year = {2024}
}
Comments
6 pages; accepted to CogSci 2024