CP.ar1.se |
Compute a conditional probability of observing a set of counts as extreme as the new observations of a subjectvisit given the previous observations of the same subject based on the negative binomial mixed-effect AR(1) model. |
CP.se |
Compute a conditional probability of observing a set of counts as extreme as the new observations of a subject given the previous observations from the same subject based on the negative binomial mixed effect independent model. |
CP1.ar1 |
Compute a conditional probability of observing a set of counts as extreme as the new observations of a subjectvisit given the previous observations of the same subject based on the negative binomial mixed-effect AR(1) model. |
dbb |
Calculate predicted values of E(Gi|Yi) given the estimates of parameters |
densYijGivenYij_1AndGY |
Calculate predicted values of E(Gi|Yi) given the estimates of parameters |
dens_Yi.gY |
Calculate predicted values of E(Gi|Yi) given the estimates of parameters |
fitParaAR1 |
Performs the maximum likelihood estimation for the negative binomial mixed-effect AR(1) model |
fitParaIND |
Performs the maximum likelihood estimation for the negative binomial mixed-effect independent model |
fitSemiAR1 |
Fit the semi-parametric negative binomial mixed-effect AR(1) model. |
fitSemiIND |
Fit the semi-parametric negative binomial mixed-effect independent model. |
formulaToDat |
Performs the maximum likelihood estimation for the negative binomial mixed-effect independent model |
index.batch |
The main function to compute the point estimates and 95% confidence intervals (for a parametric model) of the conditional probabilities Pr(q(Y[i,new])>=q(y[i,new])| Y[i,pre]=y[i,pre]) for multiple subjects. |
int.denRE |
Calculate predicted values of E(Gi|Yi) given the estimates of parameters |
int.numRE |
Calculate predicted values of E(Gi|Yi) given the estimates of parameters |
jCP |
Compute a conditional probability of observing a set of counts as extreme as the new observations of a subject given the previous observations from the same subject based on the negative binomial mixed effect independent model. |
jCP.ar1 |
Compute a conditional probability of observing a set of counts as extreme as the new observations of a subjectvisit given the previous observations of the same subject based on the negative binomial mixed-effect AR(1) model. |
lmeNB |
Performs the maximum likelihood estimation for the negative binomial mixed-effect model. This function is a wrapper for 'fitParaIND', 'fitParaAR1', 'fitSemiIND' and 'fitSemiAR1'. |
MCCP.ar1 |
Compute a conditional probability of observing a set of counts as extreme as the new observations of a subjectvisit given the previous observations of the same subject based on the negative binomial mixed-effect AR(1) model. |
RElmeNB |
Calculate predicted values of E(Gi|Yi) given the estimates of parameters |
rNBME.R |
Simulate a dataset from the negative binomial mixed-effect independent/AR(1) model |