Habituation Reflects Optimal Exploration Over Noisy Perceptual Samples.
Published In: Topics in Cognitive Science, 2023, v. 15, n. 2. P. 290 1 of 3
Database: Academic Search Ultimate 2 of 3
Authored By: Cao, Anjie; Raz, Gal; Saxe, Rebecca; Frank, Michael C. 3 of 3
Abstract
From birth, humans constantly make decisions about what to look at and for how long. Yet, the mechanism behind such decision‐making remains poorly understood. Here, we present the rational action, noisy choice for habituation (RANCH) model. RANCH is a rational learning model that takes noisy perceptual samples from stimuli and makes sampling decisions based on expected information gain (EIG). The model captures key patterns of looking time documented in developmental research: habituation and dishabituation. We evaluated the model with adult looking time collected from a paradigm analogous to the infant habituation paradigm. We compared RANCH with baseline models (no learning model, no perceptual noise model) and models with alternative linking hypotheses (Surprisal, KL divergence). We showed that (1) learning and perceptual noise are critical assumptions of the model, and (2) Surprisal and KL are good proxies for EIG under the current learning context. This paper presents the Rational Action, Noisy Choice for Habituation (RANCH) model. The model was evaluated with adult looking time collected from a paradigm analogous to the infant habituation paradigm. And the model captured key patterns of looking time documented in developmental research: habituation and dishabituation. [ABSTRACT FROM AUTHOR]
Additional Information
- Source:Topics in Cognitive Science. 2023/04, Vol. 15, Issue 2, p290
- Document Type:Article
- Subject Area:Anatomy and Physiology
- Publication Date:2023
- ISSN:1756-8757
- DOI:10.1111/tops.12631
- Accession Number:163247771
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