Literature DB >> 33584443

Systematic Parameter Reviews in Cognitive Modeling: Towards a Robust and Cumulative Characterization of Psychological Processes in the Diffusion Decision Model.

N-Han Tran1, Leendert van Maanen2, Andrew Heathcote3, Dora Matzke4.   

Abstract

Parametric cognitive models are increasingly popular tools for analyzing data obtained from psychological experiments. One of the main goals of such models is to formalize psychological theories using parameters that represent distinct psychological processes. We argue that systematic quantitative reviews of parameter estimates can make an important contribution to robust and cumulative cognitive modeling. Parameter reviews can benefit model development and model assessment by providing valuable information about the expected parameter space, and can facilitate the more efficient design of experiments. Importantly, parameter reviews provide crucial-if not indispensable-information for the specification of informative prior distributions in Bayesian cognitive modeling. From the Bayesian perspective, prior distributions are an integral part of a model, reflecting cumulative theoretical knowledge about plausible values of the model's parameters (Lee, 2018). In this paper we illustrate how systematic parameter reviews can be implemented to generate informed prior distributions for the Diffusion Decision Model (DDM; Ratcliff and McKoon, 2008), the most widely used model of speeded decision making. We surveyed the published literature on empirical applications of the DDM, extracted the reported parameter estimates, and synthesized this information in the form of prior distributions. Our parameter review establishes a comprehensive reference resource for plausible DDM parameter values in various experimental paradigms that can guide future applications of the model. Based on the challenges we faced during the parameter review, we formulate a set of general and DDM-specific suggestions aiming to increase reproducibility and the information gained from the review process.
Copyright © 2021 Tran, van Maanen, Heathcote and Matzke.

Entities:  

Keywords:  Bayesian inference; cognitive modeling; cumulative science; diffusion decision model; prior distributions

Year:  2021        PMID: 33584443      PMCID: PMC7874054          DOI: 10.3389/fpsyg.2020.608287

Source DB:  PubMed          Journal:  Front Psychol        ISSN: 1664-1078


  43 in total

1.  Decomposing task-switching costs with the diffusion model.

Authors:  Florian Schmitz; Andreas Voss
Journal:  J Exp Psychol Hum Percept Perform       Date:  2011-11-07       Impact factor: 3.332

2.  Fast-dm: a free program for efficient diffusion model analysis.

Authors:  Andreas Voss; Jochen Voss
Journal:  Behav Res Methods       Date:  2007-11

3.  Decomposing bias in different types of simple decisions.

Authors:  Corey N White; Russell A Poldrack
Journal:  J Exp Psychol Learn Mem Cogn       Date:  2013-11-18       Impact factor: 3.051

4.  Dynamic models of choice.

Authors:  Andrew Heathcote; Yi-Shin Lin; Angus Reynolds; Luke Strickland; Matthew Gretton; Dora Matzke
Journal:  Behav Res Methods       Date:  2019-04

5.  Diffusion model analysis with MATLAB: a DMAT primer.

Authors:  Joachim Vandekerckhove; Francis Tuerlinckx
Journal:  Behav Res Methods       Date:  2008-02

Review 6.  Psychological interpretation of the ex-Gaussian and shifted Wald parameters: a diffusion model analysis.

Authors:  Dora Matzke; Eric-Jan Wagenmakers
Journal:  Psychon Bull Rev       Date:  2009-10

7.  What can the diffusion model tell us about prospective memory?

Authors:  Sebastian S Horn; Ute J Bayen; Rebekah E Smith
Journal:  Can J Exp Psychol       Date:  2011-03

8.  A method for efficiently sampling from distributions with correlated dimensions.

Authors:  Brandon M Turner; Per B Sederberg; Scott D Brown; Mark Steyvers
Journal:  Psychol Methods       Date:  2013-05-06

9.  The EZ diffusion model provides a powerful test of simple empirical effects.

Authors:  Don van Ravenzwaaij; Chris Donkin; Joachim Vandekerckhove
Journal:  Psychon Bull Rev       Date:  2017-04

10.  HDDM: Hierarchical Bayesian estimation of the Drift-Diffusion Model in Python.

Authors:  Thomas V Wiecki; Imri Sofer; Michael J Frank
Journal:  Front Neuroinform       Date:  2013-08-02       Impact factor: 4.081

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  1 in total

Review 1.  Expert agreement in prior elicitation and its effects on Bayesian inference.

Authors:  Angelika M Stefan; Dimitris Katsimpokis; Quentin F Gronau; Eric-Jan Wagenmakers
Journal:  Psychon Bull Rev       Date:  2022-04-04
  1 in total

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