Computational models of learning have proved largely successful in characterizing potential mechanisms which allow humans to make decisions in uncertain and volatile contexts. We report here findings that extend existing knowledge and show that a modified reinforcement learning model, which has separate parameters according to whether the previous trial gave a reward or a punishment, can provide the best fit to human behavior in decision making under uncertainty. More specifically, we examined the fit of our modified reinforcement learning model to human behavioral data in a probabilistic two-alternative decision making task with rule reversals. Our results demonstrate that this model predicted human behavior better than a series of other models based on reinforcement learning or Bayesian reasoning. Unlike the Bayesian models, our modified reinforcement learning model does not include any representation of rule switches. When our task is considered purely as a machine learning task, to gain as many rewards as possible without trying to describe human behavior, the performance of modified reinforcement learning and Bayesian methods is similar. Others have used various computational models to describe human behavior in similar tasks, however, we are not aware of any who have compared Bayesian reasoning with reinforcement learning modified to differentiate rewards and punishments.
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http://dx.doi.org/10.3389/fnins.2014.00030 | DOI Listing |
GMS J Med Educ
November 2024
University Hospital Heidelberg, Department of General Practice and Health Services Research, Heidelberg, Germany.
Objective: In Germany, the rotation into the general practitioner's practice (GPP) as part of postgraduate medical training in general practice traditionally takes place at the end of the training period. The aim of this study was to explore possible subsequent effects of beginning training in the GPP from the perspective of general practitioners (GPs) and GP trainees.
Methods: Nationwide, GPs and GP trainees were recruited who started specialization in GP in the GPP.
Digit Health
December 2024
Clinic Chat, LLC, Denver, CO, USA.
Background: Following the US Supreme Court decision overturning Roe v. Wade, there is evidence of limitations in access to safe abortion care. Artificially intelligent (AI)-enabled conversational chatbots are becoming an appealing option to support access to care, but generative AI systems can misinform and hallucinate and risk reinforcing problematic bias and stigma related to sexual and reproductive healthcare.
View Article and Find Full Text PDFLab Anim
December 2024
Instituto Murciano de Investigación Biomédica-Pascual Parrilla, Murcia, Spain.
The purpose of this study is to provide a detailed account of our successful experience in establishing a functional zebrafish holding facility by repurposing materials from a previous installation. On the eve of the start-up of our new animal facility we were notified that a research centre was putting part of its zebrafish holding facility (29 racks, accessories, water treatment unit) up for sale. Although the originally planned room was designed for six double racks, but encouraged by the increasing use of the zebrafish model, we decided to seize the opportunity, purchase the equipment and utilize it to create a larger configuration and an independent quarantine to protect the main facility.
View Article and Find Full Text PDFInt J Ment Health Nurs
February 2025
Alice Lee Centre for Nursing Studies, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore.
Adolescents are susceptible to developing depression and anxiety, and educational interventions could improve their mental well-being. This systematic review aimed to evaluate the effectiveness of universal educational prevention interventions in improving mental health literacy, depression, and anxiety among adolescents. Eight electronic databases were searched until June 2024: Cochrane Library, PubMed, EMBASE, CINAHL, PsycINFO, Scopus, Web of Science, ProQuest Dissertations, and Theses Global.
View Article and Find Full Text PDFHarm Reduct J
December 2024
School of Applied Psychology, Griffith University, 176 Messines Ridge Road, Mt Gravatt, QLD, 4122, Australia.
Preloading of alcohol and/or drugs before an event has been examined in the research literature for the past two decades. Despite the considerable interest and scrutiny on the behaviour, there are limited, if any, attempts to conceptualise a theoretical understanding of why people preload before an event. Here we propose a Theory of Preloading (TOP)-a general cognitive-behavioural motivational model for alcohol and drug preloading.
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