delay-discounting-analysis
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Hierarchical Bayesian estimation and hypothesis testing for delay discounting tasks
Hierarchical Bayesian estimation and hypothesis testing for delay discounting tasks
Vincent, B. T. (2016) Hierarchical Bayesian estimation and hypothesis testing for delay discounting tasks, Behavior Research Methods. 48(4), 1608-1620. doi:10.3758/s13428-015-0672-2
What does this toolbox do?
This toolbox aims to be a complete solution for the analysis of experimental data from discounting tasks.
Key features:
- Bayesian estimates of discounting parameters, complete with credible intervals.
- Parameters exported to a
.csvfile for analysis in JASP. - Optionally use hierarchical inference to improve participant-level estimates.
- A variety of models are available:
- 1-parameter discount functions: exponential, hyperbolic.
- 2-parameter discount functions: hyperboloid
- Also, hyperbolic discounting + magnitude effect, where discount rates vary as a function of reward magnitude.
- Explicit modelling of participant errors provides more robust parameter estimates of discounting parameters.
- Posterior predictive checks help evaluate model goodness and aid data exclusion decisions.
- Publication quality figures.
Resources
Documentation: https://drbenvincent.github.io/delay-discounting-analysis/
Introductory video: https://www.youtube.com/watch?v=kDafp-xB7js
Questions, comments
Please use the GitHub Issues feature to ask question, report a bug, or request a feature. You'll need a GitHub account to do this, which isn't very hard to set up.
But you could always email me or tweet me @inferenceLab instead.
I'm very happy if people would like to contribute to the toolbox in any way. Please see the CONTRIBUTING.md document.