Evidence accumulation models of decision-making have led to advances in several different areas of psychology. These models provide a way to integrate response time and accuracy data, and to describe performance in terms of latent cognitive processes. Testing important psychological hypotheses using cognitive models requires a method to make inferences about different versions of the models which assume different parameters to cause observed effects. The task of model-based inference using noisy data is difficult, and has proven especially problematic with current model selection methods based on parameter estimation. We provide a method for computing Bayes factors through Monte-Carlo integration for the linear ballistic accumulator (LBA; B...
Parameter estimation in evidence-accumulation models of choice response times is demanding of both t...
An important tool in the advancement of cognitive science are quantitative models that represent dif...
Evidence accumulations models (EAMs) have become the dominant modeling framework within rapid decisi...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
Over the last decade, the Bayesian estimation of evidence-accumulation models has gainedpopularity, ...
Research Doctorate - Doctor of Philosophy (PhD)Past decades of research within the area of decision-...
One of the most important methodological problems in psychological research is assessing the reasona...
The last 25 years have shown a steady increase in attention for the Bayes factor as a tool for hypot...
In the psychological literature, there are two seemingly different approaches to inference: that fro...
The last 25 years have shown a steady increase in attention for the Bayes factor as a tool for hypot...
In this article, we present a Bayes factor solution for inference in multiple regression. Bayes fact...
How can we best understand and analyze data obtained from psychological experiments? Throughout this...
In this paper we review the concepts of Bayesian evidence and Bayes factors, also known as log odds ...
Learning about hypothesis evaluation using the Bayes factor could enhance psychological research. In...
Parameter estimation in evidence-accumulation models of choice response times is demanding of both t...
An important tool in the advancement of cognitive science are quantitative models that represent dif...
Evidence accumulations models (EAMs) have become the dominant modeling framework within rapid decisi...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
Over the last decade, the Bayesian estimation of evidence-accumulation models has gainedpopularity, ...
Research Doctorate - Doctor of Philosophy (PhD)Past decades of research within the area of decision-...
One of the most important methodological problems in psychological research is assessing the reasona...
The last 25 years have shown a steady increase in attention for the Bayes factor as a tool for hypot...
In the psychological literature, there are two seemingly different approaches to inference: that fro...
The last 25 years have shown a steady increase in attention for the Bayes factor as a tool for hypot...
In this article, we present a Bayes factor solution for inference in multiple regression. Bayes fact...
How can we best understand and analyze data obtained from psychological experiments? Throughout this...
In this paper we review the concepts of Bayesian evidence and Bayes factors, also known as log odds ...
Learning about hypothesis evaluation using the Bayes factor could enhance psychological research. In...
Parameter estimation in evidence-accumulation models of choice response times is demanding of both t...
An important tool in the advancement of cognitive science are quantitative models that represent dif...
Evidence accumulations models (EAMs) have become the dominant modeling framework within rapid decisi...