This study demonstrates, for the first time, how Bayesian hierarchical modeling can be applied to yield novel insights into the long-term temporal dynamics of subjective well-being (SWB). Several models were proposed and examined using Bayesian methods. The models were assessed using a sample of Australian adults (. n=. 1081) who provided annual SWB scores on between 5 and 10 occasions. The best fitting models involved a probit transformation, allowed error variance to vary across participants, and did not include a lag parameter. Including a random linear and quadratic effect resulted in only a small improvement over the intercept only model. Examination of individual-level fits suggested that most participants were stable with a small sub...
The study of multidimensional well-being has long recognized the importance of formalizing the inte...
We consider the issue of the dynamics of perceptions, as expressed in responses to survey questions ...
Predicting health outcomes from longitudinal health histories is of central importance to healthcare...
This contribution aims at using Bayesian networks for modelling the relations between the individua...
We use Bayesian Networks to model the influence of diverse socio-economic factors on subjective well...
Linear dynamical system State space modeling are especially of interest in the study of emotion dyna...
A large multidisciplinary literature has sought to explain how a person's wellbeing changes over tim...
Social and decision-making deficits are often the first symptoms of neuropsychiatric disorders. In r...
In this paper, we propose a multilevel process modeling approach to describing individual difference...
Linear dynamical system theory is a broad theoretical framework that has been applied in various res...
The majority of people around the world report wanting “the good life.” But how do they achieve it? ...
In this paper, we propose a multilevel process modeling approach to describing individual difference...
To characterize the dynamics of psychological processes, intensively repeated measurements of certai...
This Paper Proposes Modeling Trajectories of Psychological Well-being Using Latent Growth Curve mode...
Emotions are dynamic entities, following the ebb and flow of daily life. Dynamic patterns reflect th...
The study of multidimensional well-being has long recognized the importance of formalizing the inte...
We consider the issue of the dynamics of perceptions, as expressed in responses to survey questions ...
Predicting health outcomes from longitudinal health histories is of central importance to healthcare...
This contribution aims at using Bayesian networks for modelling the relations between the individua...
We use Bayesian Networks to model the influence of diverse socio-economic factors on subjective well...
Linear dynamical system State space modeling are especially of interest in the study of emotion dyna...
A large multidisciplinary literature has sought to explain how a person's wellbeing changes over tim...
Social and decision-making deficits are often the first symptoms of neuropsychiatric disorders. In r...
In this paper, we propose a multilevel process modeling approach to describing individual difference...
Linear dynamical system theory is a broad theoretical framework that has been applied in various res...
The majority of people around the world report wanting “the good life.” But how do they achieve it? ...
In this paper, we propose a multilevel process modeling approach to describing individual difference...
To characterize the dynamics of psychological processes, intensively repeated measurements of certai...
This Paper Proposes Modeling Trajectories of Psychological Well-being Using Latent Growth Curve mode...
Emotions are dynamic entities, following the ebb and flow of daily life. Dynamic patterns reflect th...
The study of multidimensional well-being has long recognized the importance of formalizing the inte...
We consider the issue of the dynamics of perceptions, as expressed in responses to survey questions ...
Predicting health outcomes from longitudinal health histories is of central importance to healthcare...