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GRADUATE SEMINAR – Introduction to the computational modelling of behavioral data and its applications to emotional learning and decision-making

6 October 2020 @ 14 h 00 min - 18 h 00 min

Computational modeling of behavioral data is revolutionizing research on emotional learning and decision-making. This approach consists in formalizing cognitive processes underlying behavior as detailed algorithms – computational models. Ultimately, these models can shed new lights on the neuronal mechanisms underlying behavior, as well as on the mechanisms involved in psychological disorders. The goal of this workshop is to introduce the computational modeling approach, focusing on reinforcement learning (RL) algorithms and their application to emotional learning and decision-making. We will provide a theoretical and practical introduction showing what a RL model can and cannot tell us about the cognitive processes used to solve simple learning tasks. We will illustrate some of the basic modeling techniques through simple, hands on, programming exercises. Finally, we will discuss the advantages and the pitfalls of this approach that is increasingly growing in popularity. Schedule 14h00-15h00: General introduction to reinforcement learning models 15h00-15h30: Practical part in groups 15h30-14h00: Break 14h30-15h00: From reinforcement learning to behavior 15h00-15h30: Practical part in groups 15h30-16h00: Break 16h30-17h00: Estimating model parameters 17h00-17h30: Programming Demo 17h30-18h00: Discussion on why and how of modeling approach MANDATORY REGISTRATION: https://formulaire.unige.ch/cisa/survey/index.php/995324?lang=en Requirements: Laptop with Matlab or Octave installed Optional readings materials (as follow-up): Daw, N.D. (2011). Trial-by-trial data analysis using computational models. Decis. Mak. Affect Learn. Atten. Perform. XXIII 23, 3–38. O’Doherty, J. P., Hampton, A., & Kim, H. (2007). Model‐based fMRI and its application to reward learning and decision-making. Annals of the New York Academy of sciences, 1104(1), 35-53. Palminteri, S., Wyart, V., & Koechlin, E. (2017). The importance of falsification in computational cognitive modeling. Trends in cognitive sciences, 21(6), 425-433. Wilson, R. C., & Collins, A. G. (2019). Ten simple rules for the computational modeling of behavioral data. Elife, 8, e49547. Optional online tutorial (as follow-up) http://hannekedenouden.ruhosting.nl/RLtutorial/html/ModellingRecipe.html

Details

Date:
6 October 2020
Time:
14 h 00 min - 18 h 00 min
Event Category:
Website:
http://agenda.unige.ch/events/view/29205

Venue

H8.01 D