Bayesian analysis of risk- and ambiguity aversion in two information sampling tasks
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https://hdl.handle.net/10037/19575Date
2020-07Type
Conference objectKonferansebidrag
Abstract
Humans are aversive to risk (irreducible
uncertainty) and ambiguity (reducible uncertainty). However, strong ambiguity aversion does
not necessarily imply strong risk aversion. Further, in real life it can be challenging to
attribute uncertainty and one may treat ambiguity as risk. This can lead to biases in
information sampling, i.e. premature stopping of collecting information that could reduce
uncertainty. These biases in information sampling have also been linked to delusional
thinking and hallucination disposition in both healthy individuals as well as in mental
disorders like schizophrenia. Modelling allows to identify the processes and aberrances in
decision-making. Here, we experimentally investigate these potentially aberrant attributions
by using the draws to decision version of the beads task (Huq et al., 1988) and the risk and
ambiguity lottery task (Levy et al., 2010). For each participant (N=77) we extracted their
risk-, and ambiguity aversion using the hierarchical Bayesian modelling of Decision-Making
tasks R-package (hBayesDM; Woo-Young et al., 2017), and used those parameters as
predictors for explaining the draws to decision in the beads-task. Preliminary results indicate
that a person’s risk aversion but not ambiguity aversion is related to draws to decision in the
beads task. This displays both the usefulness and importance of modelling cognitive tasks to
better understand and analyze the results from decision-making tasks, as well as its
importance in order to better understand and disentangle the underlying mechanisms of
everyday biases.
Description
Abstract to academic presentation at the virtual conference "The 53rd Annual Meeting of the Society for Mathematical Psychology (MathPsych2020)", arranged by Society for Mathematical Psychology, online 20.07.20 - 31.07.20.
http://www.mathpsych.org/conferences/2020/.
The presentation is available at https://www.youtube.com/watch?v=SZE-WpqzQXw.
Citation
Klevjer, K. & Pfuhl, G. (2020). Bayesian analysis of risk- and ambiguity aversion in two information sampling tasks. Presentation at the virtual conference "The 53rd Annual Meeting of the Society for Mathematical Psychology (MathPsych2020)", arranged by Society for Mathematical Psychology, online 20.07.20 - 31.07.20.Metadata
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