if(1==99 && .Machine$sizeof.pointer != 4){ #test is no longer useful with everything done via nonlinear library(ctsem) library(testthat) set.seed(1) context("nonlinearcheck") test_that("simplenonlinearcheck", { sunspots<-sunspot.year sunspots<-sunspots[50: (length(sunspots) - (1988-1924))] id <- 1 time <- 1749:1924 datalong <- cbind(id, time, sunspots) #setup model ssmodel <- ctModel(type='stanct', n.latent=2, n.manifest=1, # n.TDpred = 1, manifestNames='sunspots', latentNames=c('ss_level', 'ss_velocity'), LAMBDA=matrix(c( 1, 'ma1|log1p(exp(param))'), nrow=1, ncol=2), DRIFT=matrix(c(0, 'a21|-log1p(exp(param))', 1, 'a22'), nrow=2, ncol=2), TDPREDEFFECT=matrix(c('tdeffect',0),2), MANIFESTMEANS=matrix(c('mm|param*10+44'), nrow=1, ncol=1), MANIFESTVAR=diag(0,1), T0VAR=matrix(c(1,0,0,1), nrow=2, ncol=2), #Because single subject DIFFUSION=matrix(c(0, 0, 0, 'diff'), ncol=2, nrow=2)) #td preds for testing only -- no real effect TD1 <- 0 datalong <- cbind(datalong,TD1) datalong[seq(10,150,10),'TD1'] = 1 ssfitnl <- ctStanFit(datalong, ssmodel, iter=300, cores=1,optimize=T,verbose=0,maxtimestep = .3, priors=TRUE,deoptim=FALSE) ssfitl <- ctStanFit(datalong, ssmodel, iter=300, chains=1,optimize=T,verbose=0,priors=TRUE) ssfitnlm <- ctStanFit(datalong, ssmodel, iter=300, chains=1,optimize=T,verbose=0,maxtimestep = 2,fit=T,priors=TRUE) #output # snl=summary(ssfitnl) # snlm=summary(ssfitnlm) # sl=summary(ssfitl) # expect_equal(snl$popmeans[,'mean'], sl$popmeans[,'mean']) expect_equal(ssfitnl$stanfit$rawest,ssfitl$stanfit$rawest,tol=1e-2) expect_equal(ssfitnl$stanfit$rawest,ssfitnlm$stanfit$rawest,tol=1e-2) expect_equal(ssfitnl$stanfit$optimfit$value,ssfitnlm$stanfit$optimfit$value,tol=1e-2) expect_equal(ssfitnl$stanfit$optimfit$value,ssfitl$stanfit$optimfit$value,tol=1e-2) cbind(ssfitnl$stanfit$rawest,ssfitl$stanfit$rawest,ssfitnlm$stanfit$rawest) c(ssfitnl$stanfit$optimfit$value,ssfitl$stanfit$optimfit$value,ssfitnlm$stanfit$optimfit$value) }) }