| Literature DB >> 35403175 |
Hoang Le1, Justine E Hoch2, Ori Ossmy2, Karen E Adolph3, Xiaoli Fern1, Alan Fern1.
Abstract
Infants' free-play behavior is highly variable. However, in developmental science, traditional analysis tools for modeling and understanding variable behavior are limited. Here, we used Hidden Markov Models (HMMs) to capture behavioral states that govern infants' toy selection during 20 minutes of free play in a new environment. We demonstrate that applying HMMs to infant data can identify hidden behavioral states and thereby reveal the underlying structure of infant toy selection and how toy selection changes in real time during spontaneous free play. More broadly, we propose that hidden-state models provide a fruitful avenue for understanding individual differences in spontaneous infant behavior.Entities:
Keywords: Behavior Modeling; Developmental Science
Year: 2021 PMID: 35403175 PMCID: PMC8988848 DOI: 10.1109/icdl49984.2021.9515677
Source DB: PubMed Journal: IEEE Int Conf Dev Learn (2021)