@article {10.7554/eLife.86491,
article_type = {journal},
title = {Tracking subjects’ strategies in behavioural choice experiments at trial resolution},
author = {Maggi, Silvia and Hock, Rebecca M and O'Neill, Martin and Buckley, Mark and Moran, Paula M and Bast, Tobias and Sami, Musa and Humphries, Mark D},
editor = {Izquierdo, Alicia and Gold, Joshua I},
volume = 13,
year = 2024,
month = {mar},
pub_date = {2024-03-01},
pages = {e86491},
citation = {eLife 2024;13:e86491},
doi = {10.7554/eLife.86491},
url = {https://doi.org/10.7554/eLife.86491},
abstract = {Investigating how, when, and what subjects learn during decision-making tasks requires tracking their choice strategies on a trial-by-trial basis. Here, we present a simple but effective probabilistic approach to tracking choice strategies at trial resolution using Bayesian evidence accumulation. We show this approach identifies both successful learning and the exploratory strategies used in decision tasks performed by humans, non-human primates, rats, and synthetic agents. Both when subjects learn and when rules change the exploratory strategies of win-stay and lose-shift, often considered complementary, are consistently used independently. Indeed, we find the use of lose-shift is strong evidence that subjects have latently learnt the salient features of a new rewarded rule. Our approach can be extended to any discrete choice strategy, and its low computational cost is ideally suited for real-time analysis and closed-loop control.},
keywords = {decision making, behavioural strategy, Bayesian inference},
journal = {eLife},
issn = {2050-084X},
publisher = {eLife Sciences Publications, Ltd},
}
