Bayesian Semiparametric Longitudinal Inverse-Probit Mixed Models for Category Learning
Minerva Mukhopadhyay, Jacie R. McHaney, Bharath Chandrasekaran, and Abhra Sarkar

TL;DR
This paper introduces a novel Bayesian semiparametric inverse-probit mixed model for longitudinal category learning, addressing the challenge of modeling human learning using only response accuracy data.
Contribution
It develops a new inverse-probit categorical model that integrates out response times, with a projection-based approach for identifiability and an efficient MCMC algorithm for inference.
Findings
Model performs well in simulation studies.
Method effectively captures longitudinal learning dynamics.
Application to tone learning demonstrates practical utility.
Abstract
Understanding how the adult human brain learns novel categories is an important problem in neuroscience. Drift-diffusion models are popular in such contexts for their ability to mimic the underlying neural mechanisms. One such model for gradual longitudinal learning was recently developed by Paulon et al. (2021). Fitting conventional drift-diffusion models, however, requires data on both category responses and associated response times. In practice, category response accuracies are often the only reliable measure recorded by behavioral scientists to describe human learning. However, To our knowledge, drift-diffusion models for such scenarios have never been considered in the literature. To address this gap, in this article, we build carefully on Paulon et al. (2021), but now with latent response times integrated out, to derive a novel biologically interpretable class of `inverse-probit'…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Neonatal and fetal brain pathology
