if(identical(Sys.getenv("NOT_CRAN"), "true") & .Machine$sizeof.pointer != 4){ # Sys.setenv(NOT_CRAN='true') set.seed(1) library(ctsem) library(testthat) context("dtVct_lVnl") test_that("dtVct_CINTheterogeneity", { set.seed(1) s=list() nsubjects=500 Tpoints=15 parsd=1.4 parmu= -3.4 dt=1 par= (rnorm(nsubjects,parmu,parsd)) mean(par) sd(par) for(subi in 1:nsubjects){ gm=suppressMessages(ctModel(LAMBDA=diag(1), Tpoints=Tpoints, DRIFT=matrix(-.5),T0MEANS = matrix(4), CINT=matrix(par[subi]),DIFFUSION=matrix(1), T0VAR=matrix(1), MANIFESTVAR=matrix(.3))) d=suppressMessages(ctGenerate(gm,n.subjects = 1,burnin = 0,dtmean = dt)) if(subi==1) dat=cbind(subi,d) else dat=rbind(dat,cbind(subi,d)) } colnames(dat)[1]='id' cm <- ctModel(LAMBDA=diag(1), type='stanct', CINT=matrix('cint'), MANIFESTMEANS = matrix(0) ) dm <- ctModel(LAMBDA=diag(1), type='standt', CINT=matrix('cint'), MANIFESTMEANS = matrix(0) ) for(m in c('cm','dm')){ f = ctStanFit(datalong = dat,ctstanmodel = get(m),optimize=TRUE, verbose=0,savescores = FALSE,priors=FALSE) if(length(s)==0) s[[1]] = list() s[[1]][[m]] <- summary(f,parmatrices=TRUE) } ctpars=s[[1]]$cm$parmatrices ctpars <- ctpars[!ctpars$matrix %in% c('DRIFT','CINT','DIFFUSIONcov'),] dtpars=s[[1]]$dm$parmatrices dtpars$matrix[dtpars$matrix %in% 'DRIFT'] <- 'dtDRIFT' dtpars <- dtpars[dtpars$matrix %in% ctpars$matrix,] dtpars <- dtpars[order(dtpars$matrix),] ctpars <- ctpars[order(ctpars$matrix),] for(ri in 1:nrow(dtpars)){ i <- which(apply(ctpars,1,function(x) all(x[1:3] == dtpars[ri,1:3]))) if(length(i)>0){ for(ti in 4:5){ # print(c(ctpars[i,ti],dtpars[ri,ti])) testthat::expect_equivalent(ctpars[i,ti],dtpars[ri,ti],tol=ifelse(ti==4,1e-2,1e-1)) } } } ll=unlist(lapply(s, function(argi) lapply(argi, function(m) m$loglik))) for(dimi in 2:length(ll)){ testthat::expect_equivalent(ll[dimi],ll[dimi-1],tol=1e-2) } }) #end cint heterogeneity test_that("dtVct_noheterogeneity", { set.seed(1) s=list() nsubjects=200 Tpoints=10 parsd=0 parmu= -1.4 dt=1 par= (rnorm(nsubjects,parmu,parsd)) mean(par) sd(par) for(subi in 1:nsubjects){ gm=suppressMessages(ctModel(LAMBDA=diag(1), Tpoints=Tpoints, DRIFT=matrix(-.5),T0MEANS = matrix(4), CINT=matrix(par[subi]),DIFFUSION=matrix(2), T0VAR=matrix(2), MANIFESTVAR=matrix(2))) d=suppressMessages(ctGenerate(gm,n.subjects = 1,burnin = 10,dtmean = dt)) if(subi==1) dat=cbind(subi,d) else dat=rbind(dat,cbind(subi,d)) } colnames(dat)[1]='id' cm <- ctModel(LAMBDA=diag(1), type='stanct', CINT=matrix('cint'), MANIFESTMEANS = matrix(0)) cm$pars$indvarying <- FALSE dm <- ctModel(LAMBDA=diag(1), type='standt', CINT=matrix('cint'), MANIFESTMEANS = matrix(0)) dm$pars$indvarying <- FALSE for(m in c('cm','dm')){ argslist <- list(ml=list(datalong = dat,ctstanmodel = get(m)) ) for(argi in names(argslist)){ f = ctStanFit(datalong = dat,ctstanmodel = get(m)) if(is.null(s[[argi]])) s[[argi]] = list() s[[argi]][[m]] <- summary(f,parmatrices=TRUE) } } ctpars=s[[1]]$cm$parmatrices ctpars <- ctpars[!ctpars$matrix %in% c('DRIFT','CINT','DIFFUSIONcov'),] dtpars=s[[1]]$dm$parmatrices dtpars$matrix[dtpars$matrix %in% 'DRIFT'] <- 'dtDRIFT' for(ri in 1:nrow(dtpars)){ i <- which(apply(ctpars,1,function(x) all(x[1:3] == dtpars[ri,1:3]))) if(length(i)>0){ for(ti in 4:5){ # print(c(ctpars[i,ti],dtpars[ri,ti])) testthat::expect_equivalent(ctpars[i,ti],dtpars[ri,ti],tol=ifelse(ti==4,1e-1,1e-1)) } } } ll=unlist(lapply(s, function(argi) lapply(argi, function(m) m$loglik))) for(dimi in 2:length(ll)){ testthat:: expect_equivalent(ll[dimi],ll[dimi-1],tol=1e-2) } } #end no heterogeneity ) }