Hierarchical meta-d' model (HMeta-d)
Steve Fleming [email protected]
This MATLAB toolbox implements the meta-d’ model (Maniscalco & Lau, 2012) in a hierarchical Bayesian framework using Matlab and JAGS, a program for conducting MCMC inference on arbitrary Bayesian models. A paper with more details on the method and the advantages of estimating meta-d’ in a hierarchal Bayesian framework is available here https://academic.oup.com/nc/article/doi/10.1093/nc/nix007/3748261/HMeta-d-hierarchical-Bayesian-estimation-of.
For a more general introduction to Bayesian models of cognition see Lee & Wagenmakers, Bayesian Cognitive Modeling: A Practical Course http://bayesmodels.com/
The model builds on work by Michael Lee on Bayesian estimation of Type 1 SDT parameters: https://link.springer.com/article/10.3758/BRM.40.2.450
The code is designed to work “out of the box” without much coding on the part of the user, and it receives data in the same format as Maniscalco & Lau’s toolbox, allowing easy switching and comparison between the two.
- To get started, you need to first ensure JAGS (an MCMC language similar to BUGS) is installed on your machine. See here for further details:
http://mcmc-jags.sourceforge.net/
Note that there are re compatibility issues between matjags and JAGS 4.X To run the MATLAB code you will need to install JAGS 3.4.0 rather than the latest version. The model files work fine with JAGS 4.X when called from R with rjags.
- The main functions are fit_meta_d_mcmc (for fitting individual subject data) and fit_meta_d_mcmc_group (for hierarchical fits of group data). More information is contained in the help of these two functions and in the wiki https://github.com/smfleming/HMM/wiki/HMeta-d-tutorial. To get started try running exampleFit or exampleFit_group.
A walkthrough of the model and intuitions behind different usages can be found in Olivia Faull's step-by-step tutorial developed for the Zurich Computational Psychiatry course: https://github.com/metacoglab/HMeta-d/blob/master/CPC_metacog_tutorial/cpc_metacog_tutorial.m
Please get in touch with your experiences with using the toolbox, and any bug reports or issues to me at [email protected]
License
This code is being released with a permissive open-source license. You should feel free to use or adapt the utility code as long as you follow the terms of the license, which are enumerated below. If you use the toolbox in a publication we ask that you cite the following paper:
Fleming, S.M. (2017) HMeta-d: hierarchical Bayesian estimation of metacognitive efficiency from confidence ratings, Neuroscience of Consciousness, 3(1) nix007, https://doi.org/10.1093/nc/nix007
Copyright (c) 2017, Stephen Fleming
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