We present a Bayesian nonlinear mixed-effects location scale model (NL-MELSM). The NL-MELSM allows for fitting nonlinear functions to the location, or individual means, and the scale, or within-person variance. Specifically, in the context of learning, this model allows the within-person variance to follow a nonlinear trajectory, where it can be determined whether variability reduces during learning. It incorporates a sub-model that can predict nonlinear parameters for both the location and scale. This specification estimates random effects for all nonlinear location and scale parameters that are drawn from a common multivariate distribution. This allows estimation of covariances among the random effects, within and across the location and ...
In recent years, the use of longitudinal designs has increased appreciably and the study of change h...
International audienceWe propose a Bayesian mixed-effects model to learn typical scenarios of change...
This thesis provides a framework for estimating the location-scale parameters in random effects mode...
Hypotheses about psychological processes are most frequently dedicated to individual mean difference...
Intensive longitudinal studies and experience sampling methods are becoming more common in psycholog...
Hypotheses about psychological processes are most frequently dedicated to individual mean difference...
In public health research an increasing number of studies is conducted in which intensive longitudin...
Mixed-effects models are becoming common in psychological science. Although they have many desirable...
The use of mixed-effects models in practice, often in the form of Bayesian hierarchical models, is g...
Computational learning models are critical for understanding mechanisms of adaptive behavior. Howeve...
The first objective of the paper is to implement a two stage Bayesian hierarchical nonlinear model f...
In this paper we propose a general model determination strategy based on Bayesian methods for the no...
International audienceWe propose a generic Bayesian mixed-effects model to estimate the temporal pro...
We present a mixed-effects location scale model (MELSM) for examining the daily dynamics of affect i...
We present a mixed-effects location scale model (MELSM) for examining the daily dynamics of affect i...
In recent years, the use of longitudinal designs has increased appreciably and the study of change h...
International audienceWe propose a Bayesian mixed-effects model to learn typical scenarios of change...
This thesis provides a framework for estimating the location-scale parameters in random effects mode...
Hypotheses about psychological processes are most frequently dedicated to individual mean difference...
Intensive longitudinal studies and experience sampling methods are becoming more common in psycholog...
Hypotheses about psychological processes are most frequently dedicated to individual mean difference...
In public health research an increasing number of studies is conducted in which intensive longitudin...
Mixed-effects models are becoming common in psychological science. Although they have many desirable...
The use of mixed-effects models in practice, often in the form of Bayesian hierarchical models, is g...
Computational learning models are critical for understanding mechanisms of adaptive behavior. Howeve...
The first objective of the paper is to implement a two stage Bayesian hierarchical nonlinear model f...
In this paper we propose a general model determination strategy based on Bayesian methods for the no...
International audienceWe propose a generic Bayesian mixed-effects model to estimate the temporal pro...
We present a mixed-effects location scale model (MELSM) for examining the daily dynamics of affect i...
We present a mixed-effects location scale model (MELSM) for examining the daily dynamics of affect i...
In recent years, the use of longitudinal designs has increased appreciably and the study of change h...
International audienceWe propose a Bayesian mixed-effects model to learn typical scenarios of change...
This thesis provides a framework for estimating the location-scale parameters in random effects mode...