| Literature DB >> 34918270 |
Sang Ho Lee1, Dan Kim2, John E Opfer2, Mark A Pitt2, Jay I Myung2.
Abstract
To characterize numerical representations, the number-line task asks participants to estimate the location of a given number on a line flanked with zero and an upper-bound number. An open question is whether estimates for symbolic numbers (e.g., Arabic numerals) and non-symbolic numbers (e.g., number of dots) rely on common processes with a common developmental pathway. To address this question, we explored whether well-established findings in symbolic number-line estimation generalize to non-symbolic number-line estimation. For exhaustive investigations without sacrificing data quality, we applied a novel Bayesian active learning algorithm, dubbed Gaussian process active learning (GPAL), that adaptively optimizes experimental designs. The results showed that the non-symbolic number estimation in participants of diverse ages (5-73 years old, n = 238) exhibited three characteristic features of symbolic number estimation.Entities:
Keywords: Active learning; Cognitive development; Cognitive modeling; Gaussian process; Hierarchical Bayesian modeling; Numerical cognition
Mesh:
Year: 2021 PMID: 34918270 DOI: 10.3758/s13423-021-02041-5
Source DB: PubMed Journal: Psychon Bull Rev ISSN: 1069-9384