Model comparison is the cornerstone of theoretical progress in psychological research. Common practice overwhelmingly relies on tools that evaluate competing models by balancing in-sample descriptive adequacy against model flexibility, with modern approaches advocating the use of marginal likelihood for hierarchical cognitive models. Cross-validation is another popular approach but its implementation remains out of reach for cognitive models evaluated in a Bayesian hierarchical framework, with the major hurdle being its prohibitive computational cost. To address this issue, we develop novel algorithms that make variational Bayes (VB) inference for hierarchical models feasible and computationally efficient for complex cognitive models of sub...
Using Bayesian methods to apply computational models of cognitive processes, or Bayesian cognitive m...
Bayesian hypothesis testing for hierarchical models is greatly facilitated by the use of sophisticat...
How can we best understand and analyze data obtained from psychological experiments? Throughout this...
From a computational perspective, the primary goal of cognitive science is to infer the influence of...
To be useful, cognitive models with fitted parameters should show generalizability across time and a...
Abstract To be useful, cognitive models with fitted parame-ters should show generalizability across ...
Bayesian models of cognition provide a powerful way to understand the behavior and goals of individu...
The thesis develops efficient Bayesian estimation methods for Evidence Accumulation Models (EAMs), a...
Hierarchical Bayesian methods offer a principled and comprehensive way to relate psychological model...
Computational modeling plays an important role in modern neuroscience research. Much previous resear...
2020, The Psychonomic Society, Inc. Recent advances in Markov chain Monte Carlo (MCMC) extend the sc...
Introduction: The need for hierarchical models Those of us who study human cognition have no easy ta...
Probabilistic models of decision making under various forms of uncertainty have been applied in rece...
The hierarchical Bayesian approach to cognitive modeling often provides a quality of inference that ...
Psychological experiments often yield data that are hierarchically structured. A number of popular s...
Using Bayesian methods to apply computational models of cognitive processes, or Bayesian cognitive m...
Bayesian hypothesis testing for hierarchical models is greatly facilitated by the use of sophisticat...
How can we best understand and analyze data obtained from psychological experiments? Throughout this...
From a computational perspective, the primary goal of cognitive science is to infer the influence of...
To be useful, cognitive models with fitted parameters should show generalizability across time and a...
Abstract To be useful, cognitive models with fitted parame-ters should show generalizability across ...
Bayesian models of cognition provide a powerful way to understand the behavior and goals of individu...
The thesis develops efficient Bayesian estimation methods for Evidence Accumulation Models (EAMs), a...
Hierarchical Bayesian methods offer a principled and comprehensive way to relate psychological model...
Computational modeling plays an important role in modern neuroscience research. Much previous resear...
2020, The Psychonomic Society, Inc. Recent advances in Markov chain Monte Carlo (MCMC) extend the sc...
Introduction: The need for hierarchical models Those of us who study human cognition have no easy ta...
Probabilistic models of decision making under various forms of uncertainty have been applied in rece...
The hierarchical Bayesian approach to cognitive modeling often provides a quality of inference that ...
Psychological experiments often yield data that are hierarchically structured. A number of popular s...
Using Bayesian methods to apply computational models of cognitive processes, or Bayesian cognitive m...
Bayesian hypothesis testing for hierarchical models is greatly facilitated by the use of sophisticat...
How can we best understand and analyze data obtained from psychological experiments? Throughout this...