A hierarchical cognitive threshold model of human decision making on different length optimal stopping problems
Abstract
In optimal stopping problems, people are asked to choose the
maximum out of a sequence of values, under the constraint
that a number can only be chosen when it is presented. We
present a series of threshold models of human decision making
on optimal stopping problems, including a new hierarchical
model that assumes individual differences in threshold setting
are controlled by deviations or biases from optimality associated
with risk propensity, and is applicable to optimal stopping
problems of any length. Using Bayesian graphical modeling
methods, we apply the models to previous data involving 101
participants with large individual differences who completed
sets of length 5 and length 10 problems. Our results demonstrate
the effectiveness of the bias-from-optimal hierarchical
model, find individual differences in thresholds that people
use, but also find that these individual differences are stable
across the two optimal stopping tasks.
Citation
(2015). A hierarchical cognitive threshold model of human decision making on different length optimal stopping problems. Proceedings of the 37th Annual Conference of the Cognitive Science Society, 824–829.
Bibtex
@incollection{guan_etal:2015:hierarchical, title = {{A} hierarchical cognitive threshold model of human decision making on different length optimal stopping problems}, author = {Guan, Maime and Lee, Michael D. and Vandekerckhove, Joachim}, year = {2015}, journal = {Proceedings of the 37th Annual Conference of the Cognitive Science Society}, pages = {824--829} }