When noncompliance happens to longitudinal experiments, the randomness for drawing causal inferences is contaminated. In such cases, the longitudinal Complier Average Causal Effect (CACE) is often estimated. The Latent Growth Model (LGM) is very useful in estimating longitudinal trajectories and can be easily adapted for estimating longitudinal CACE. Two popular CACE approaches, the Standard IV approach and the Mixture Model Based (MMB) approach, are both readily applicable to the LGM framework. The Standard IV approach is simple in modelling and has a low computational burden, but it is also criticized for ignoring distributions of subgroups and leading to biased estimations. The MMB approach is capable of not only estimating the CACE bu...
Cross-lagged panel models (CLPMs) are widely used to test mediation with longitudinal panel data. On...
Complier average causal effects (CACE) estimate the impact of an intervention among treatment compli...
This thesis is about estimation bias of longitudinal data when there is correlation between the expl...
The importance of accessing treatment fidelity or compliance in intervention studies has long been r...
We extend to the longitudinal setting a latent class approach that has beed recently introduced by \...
UnrestrictedIn 1988, McArdle identified issues modeling multivariate growth using what he termed “se...
In longitudinal settings, causal inference methods usually rely on a discretization of the patient ...
Longitudinal studies, randomized or observational, can provide insight into the impact of treatment ...
Latent curve models (LCMs) have been used extensively to analyze longitudinal data. However, little ...
In randomized control trials (RCTs) in the education field, the complier average causal effect (CACE...
Longitudinal processes in multiple domains are often theorized to be nonlinear, which poses unique s...
Noncompliance is a common problem in randomized trials. When there is noncompliance, there is often ...
The counterfactual framework represents the dominant paradigm for testing and evaluating causal clai...
Longitudinal modeling allows researchers to capture changes in variables that take time to exert the...
In observational studies, unobserved confounding is a major barrier in isolating the average causal ...
Cross-lagged panel models (CLPMs) are widely used to test mediation with longitudinal panel data. On...
Complier average causal effects (CACE) estimate the impact of an intervention among treatment compli...
This thesis is about estimation bias of longitudinal data when there is correlation between the expl...
The importance of accessing treatment fidelity or compliance in intervention studies has long been r...
We extend to the longitudinal setting a latent class approach that has beed recently introduced by \...
UnrestrictedIn 1988, McArdle identified issues modeling multivariate growth using what he termed “se...
In longitudinal settings, causal inference methods usually rely on a discretization of the patient ...
Longitudinal studies, randomized or observational, can provide insight into the impact of treatment ...
Latent curve models (LCMs) have been used extensively to analyze longitudinal data. However, little ...
In randomized control trials (RCTs) in the education field, the complier average causal effect (CACE...
Longitudinal processes in multiple domains are often theorized to be nonlinear, which poses unique s...
Noncompliance is a common problem in randomized trials. When there is noncompliance, there is often ...
The counterfactual framework represents the dominant paradigm for testing and evaluating causal clai...
Longitudinal modeling allows researchers to capture changes in variables that take time to exert the...
In observational studies, unobserved confounding is a major barrier in isolating the average causal ...
Cross-lagged panel models (CLPMs) are widely used to test mediation with longitudinal panel data. On...
Complier average causal effects (CACE) estimate the impact of an intervention among treatment compli...
This thesis is about estimation bias of longitudinal data when there is correlation between the expl...