Change point models are used to describe processes over time that show a change in direction. An example of such a process is cognitive ability, where a decline a few years before death is sometimes observed. A broken-stick model consists of two linear parts and a breakpoint where the two lines intersect. Alternatively, models can be formulated that imply a smooth change between the two linear parts. Change point models can be extended by adding random effects to account for variability between subjects. A new smooth change point model is introduced and examples are presented that show how change point models can be estimated using functions in R for mixed-effects models. The Bayesian inference using WinBUGS is also discussed. The methods a...
Le but de ce travail a été de proposer des méthodes d'inférence pour décrire l'histoire naturelle de...
A mixed-effects regression model with a bent-cable change-point predictor is formulated to describe ...
Abstract: A mixed-effects regression model with a bent-cable change-point predictor is formulated to...
Change point models are used to describe processes over time that show a change in direction. An exa...
Random-effects change point models are formulated for longitudinal data obtained from cognitive test...
With the aim of identifying the age of onset of change in the rate of cognitive decline while accoun...
AbstractRandom-effects change point models are formulated for longitudinal data obtained from cognit...
International audienceWe propose a joint model for cognitive decline and risk of dementia to describ...
Recently there has been a keen interest in the statistical analysis of change point detection and es...
This work is an in-depth study of the change point problem from a general point of view and a furthe...
In biomedical research, various longitudinal markers measuring different quantities are often collec...
Bayesian Online Learning of the Hazard Rate in Change-Point Problems Change-point models are generat...
Many medical (and ecological) processes involve the change of shape, whereby one trajectory changes ...
Many medical (and ecological) processes involve the change of shape, whereby one trajectory changes ...
Change-point models are generative models of time-varying data in which the underlying generative pa...
Le but de ce travail a été de proposer des méthodes d'inférence pour décrire l'histoire naturelle de...
A mixed-effects regression model with a bent-cable change-point predictor is formulated to describe ...
Abstract: A mixed-effects regression model with a bent-cable change-point predictor is formulated to...
Change point models are used to describe processes over time that show a change in direction. An exa...
Random-effects change point models are formulated for longitudinal data obtained from cognitive test...
With the aim of identifying the age of onset of change in the rate of cognitive decline while accoun...
AbstractRandom-effects change point models are formulated for longitudinal data obtained from cognit...
International audienceWe propose a joint model for cognitive decline and risk of dementia to describ...
Recently there has been a keen interest in the statistical analysis of change point detection and es...
This work is an in-depth study of the change point problem from a general point of view and a furthe...
In biomedical research, various longitudinal markers measuring different quantities are often collec...
Bayesian Online Learning of the Hazard Rate in Change-Point Problems Change-point models are generat...
Many medical (and ecological) processes involve the change of shape, whereby one trajectory changes ...
Many medical (and ecological) processes involve the change of shape, whereby one trajectory changes ...
Change-point models are generative models of time-varying data in which the underlying generative pa...
Le but de ce travail a été de proposer des méthodes d'inférence pour décrire l'histoire naturelle de...
A mixed-effects regression model with a bent-cable change-point predictor is formulated to describe ...
Abstract: A mixed-effects regression model with a bent-cable change-point predictor is formulated to...