R/jomo1rancathr.R

Defines functions jomo1rancathr

Documented in jomo1rancathr

jomo1rancathr <-
  function(Y.cat, Y.numcat, X=NULL, Z=NULL, clus, beta.start=NULL, u.start=NULL, l1cov.start=NULL, l2cov.start=NULL, l1cov.prior=NULL, l2cov.prior=NULL, nburn=1000, nbetween=1000, nimp=5,a=NULL,a.prior=NULL, meth="random", output=1, out.iter=10) {
    if (nimp<2) {
      nimp=2
      cat("Minimum number of imputations:2. For single imputation using function jomo1rancathr.MCMCchain\n")
    }
    if (is.null(X)) X=matrix(1,nrow(Y.cat),1)
    if (is.null(Z)) Z=matrix(1,nrow(Y.cat),1)
    if (is.null(beta.start)) beta.start=matrix(0,ncol(X),((sum(Y.numcat)-length(Y.numcat))))
    if (is.null(l1cov.prior)) l1cov.prior=diag(1,ncol(beta.start))
    if (is.null(a)) a=ncol(beta.start)+50
    if (is.null(a.prior)) a.prior=ncol(beta.start)
    if (is_tibble(Y.cat)) {
      Y.cat<-data.frame(Y.cat)
      warning("tibbles not supported. Y.cat converted to standard data.frame. ")
    }
    if (is_tibble(X)) {
      X<-data.frame(X)
      warning("tibbles not supported. X converted to standard data.frame. ")
    }
    if (is_tibble(Z)) {
      Z<-data.frame(Z)
      warning("tibbles not supported. Z converted to standard data.frame. ")
    }
    
    clus<-factor(unlist(clus))
    previous_levels_clus<-levels(clus)
    levels(clus)<-0:(nlevels(clus)-1)
    if (is.null(u.start)) u.start = matrix(0, nlevels(clus), ncol(Z) * ((sum(Y.numcat) - length(Y.numcat))))
    if (is.null(l2cov.start)) l2cov.start = diag(1, ncol(u.start))
    if (is.null(l2cov.prior)) l2cov.prior = diag(1, ncol(l2cov.start))
    if (is.null(l1cov.start)) l1cov.start=matrix(diag(1,ncol(beta.start)),ncol(beta.start)*nlevels(clus),ncol(beta.start),2)
    previous_levels<-list()
    Y.cat<-data.frame(Y.cat)
    for (i in 1:ncol(Y.cat)) {
      Y.cat[,i]<-factor(Y.cat[,i])
      previous_levels[[i]]<-levels(Y.cat[,i])
      levels(Y.cat[,i])<-1:nlevels(Y.cat[,i])
    }
    if (any(is.na(Y.cat))) {
      if (ncol(Y.cat)==1) {
        miss.pat<-matrix(c(0,1),2,1)
        n.patterns<-2
      } else  {
        miss.pat<-md.pattern.mice(Y.cat, plot=F)
        miss.pat<-miss.pat[,colnames(Y.cat)]
        n.patterns<-nrow(miss.pat)-1
      }
    } else {
      miss.pat<-matrix(0,2,ncol(Y.cat))
      n.patterns<-nrow(miss.pat)-1
    }
    
    miss.pat.id<-rep(0,nrow(Y.cat))
    for (i in 1:nrow(Y.cat)) {
      k <- 1
      flag <- 0
      while ((k <= n.patterns) & (flag == 0)) {
        if (all(!is.na(Y.cat[i,])==miss.pat[k,1:(ncol(miss.pat))])) {
          miss.pat.id[i] <- k
          flag <- 1
        } else {
          k <- k + 1
        }
      }
    }
    
    for (i in 1:ncol(X)) {
      if (is.factor(X[,i])) X[,i]<-as.numeric(X[,i])
    }
    for (i in 1:ncol(Z)) {
      if (is.factor(Z[,i])) Z[,i]<-as.numeric(Z[,i])
    }
    stopifnot((meth=="fixed"|meth=="random"),nrow(beta.start)==ncol(X), ncol(beta.start)==((sum(Y.numcat)-length(Y.numcat))),nrow(l1cov.start)==nrow(u.start)*ncol(l1cov.start), nrow(l1cov.start)==nrow(u.start)*ncol(beta.start), nrow(l1cov.prior)==ncol(l1cov.prior),nrow(l1cov.start)==nrow(u.start)*nrow(l1cov.prior),nrow(Z)==nrow(Y.cat), ncol(l2cov.start)==ncol(u.start), ncol(u.start)==ncol(Z)*((sum(Y.numcat)-length(Y.numcat))),det(l1cov.prior)>0)
    betait=matrix(0,nrow(beta.start),ncol(beta.start))
    for (i in 1:nrow(beta.start)) {
      for (j in 1:ncol(beta.start)) betait[i,j]=beta.start[i,j]
    }
    covit=matrix(0,nrow(l1cov.start),ncol(l1cov.start))
    for (i in 1:nrow(l1cov.start)) {
      for (j in 1:ncol(l1cov.start)) covit[i,j]=l1cov.start[i,j]
    }   
    uit=matrix(0,nrow(u.start),ncol(u.start))
    for (i in 1:nrow(u.start)) {
      for (j in 1:ncol(u.start)) uit[i,j]=u.start[i,j]
    }
    covuit=matrix(0,nrow(l2cov.start),ncol(l2cov.start))
    for (i in 1:nrow(l2cov.start)) {
      for (j in 1:ncol(l2cov.start)) covuit[i,j]=l2cov.start[i,j]
    }   
    ait=as.numeric(a)
    colnamycat<-colnames(Y.cat)
    colnamx<-colnames(X)
    colnamz<-colnames(Z)
    Y.cat<-data.matrix(Y.cat)
    storage.mode(Y.cat) <- "numeric"    
    X<-data.matrix(X)
    storage.mode(X) <- "numeric"  
    stopifnot(!any(is.na(X)))
    Z<-data.matrix(Z)
    storage.mode(Z) <- "numeric"  
    stopifnot(!any(is.na(Z)))
    clus <- matrix(as.integer(levels(clus))[clus], ncol=1)
    Y=cbind(Y.cat)
    Yi=cbind( matrix(0,nrow(Y.cat),(sum(Y.numcat)-length(Y.numcat))))
    h=1
    for (i in 1:length(Y.numcat)) {
      for (j in 1:nrow(Y)) {
        if (is.na(Y.cat[j,i])) {
          Yi[j,(h):(h+Y.numcat[i]-2)]=NA
        }
      } 
      h=h+Y.numcat[i]-1
    }
    if (output!=1) out.iter=nburn+nbetween
    imp=matrix(0,nrow(Y)*(nimp+1),ncol(Y)+ncol(X)+ncol(Z)+3)
    imp[1:nrow(Y),1:ncol(Y)]=Y
    imp[1:nrow(X), (ncol(Y)+1):(ncol(Y)+ncol(X))]=X
    imp[1:nrow(Z), (ncol(Y)+ncol(X)+1):(ncol(Y)+ncol(X)+ncol(Z))]=Z
    imp[1:nrow(clus), (ncol(Y)+ncol(X)+ncol(Z)+1)]=clus
    imp[1:nrow(X), (ncol(Y)+ncol(X)+ncol(Z)+2)]=c(1:nrow(Y))
    Yimp=Yi
    Yimp2=matrix(Yimp, nrow(Yimp),ncol(Yimp))
    imp[(nrow(X)+1):(2*nrow(X)),(ncol(Y)+1):(ncol(Y)+ncol(X))]=X
    imp[(nrow(Z)+1):(2*nrow(Z)), (ncol(Y)+ncol(X)+1):(ncol(Y)+ncol(X)+ncol(Z))]=Z
    imp[(nrow(clus)+1):(2*nrow(clus)), (ncol(Y)+ncol(X)+ncol(Z)+1)]=clus
    imp[(nrow(X)+1):(2*nrow(X)), (ncol(Y)+ncol(X)+ncol(Z)+2)]=c(1:nrow(Y))
    imp[(nrow(X)+1):(2*nrow(X)), (ncol(Y)+ncol(X)+ncol(Z)+3)]=1  
    betapost<- array(0, dim=c(nrow(beta.start),ncol(beta.start),(nimp-1)))
    bpost<-matrix(0,nrow(beta.start),ncol(beta.start))
    upost<-matrix(0,nrow(u.start),ncol(u.start))
    upostall<-array(0, dim=c(nrow(u.start),ncol(u.start),(nimp-1)))
    omegapost<- array(0, dim=c(nrow(l1cov.start),ncol(l1cov.start),(nimp-1)))
    opost<-matrix(0,nrow(l1cov.start),ncol(l1cov.start))
    covupost<- array(0, dim=c(nrow(l2cov.start),ncol(l2cov.start),(nimp-1)))
    cpost<-matrix(0,nrow(l2cov.start),ncol(l2cov.start))
    meanobs<-colMeans(Yi,na.rm=TRUE)
    for (i in 1:nrow(Yi)) for (j in 1:ncol(Yi)) if (is.na(Yimp[i,j])) Yimp2[i,j]=rnorm(1,meanobs[j],1)
    if (meth=="fixed") {
      fixed=1    
    } else {
      fixed=0
    }
    .Call("jomo1ranhrC", Y, Yimp, Yimp2, Y.cat, X, Z, clus,betait,uit,bpost,upost,covit,opost, covuit,cpost,nburn, l1cov.prior,l2cov.prior,Y.numcat, 0,ait,a.prior,out.iter, fixed, 0, miss.pat.id, n.patterns, PACKAGE = "jomo")
    #betapost[,,1]=bpost
    #upostall[,,1]=upost
    #omegapost[,,(1)]=opost
    #covupost[,,(1)]=cpost
    bpost<-matrix(0,nrow(beta.start),ncol(beta.start))
    opost<-matrix(0,nrow(l1cov.start),ncol(l1cov.start))
    upost<-matrix(0,nrow(u.start),ncol(u.start))
    cpost<-matrix(0,nrow(l2cov.start),ncol(l2cov.start))
    imp[(nrow(Y)+1):(2*nrow(Y)),1:ncol(Y)]=Y.cat
    if (output==1) cat("First imputation registered.", "\n")
    for (i in 2:nimp) {
      #Yimp2=matrix(0, nrow(Yimp),ncol(Yimp))
      imp[(i*nrow(X)+1):((i+1)*nrow(X)),(ncol(Y)+1):(ncol(Y)+ncol(X))]=X
      imp[(i*nrow(Z)+1):((i+1)*nrow(Z)), (ncol(Y)+ncol(X)+1):(ncol(Y)+ncol(X)+ncol(Z))]=Z
      imp[(i*nrow(clus)+1):((i+1)*nrow(clus)), (ncol(Y)+ncol(X)+ncol(Z)+1)]=clus
      imp[(i*nrow(Z)+1):((i+1)*nrow(Z)), (ncol(Y)+ncol(X)+ncol(Z)+2)]=c(1:nrow(Y))
      imp[(i*nrow(Z)+1):((i+1)*nrow(Z)), (ncol(Y)+ncol(X)+ncol(Z)+3)]=i
      .Call("jomo1ranhrC", Y, Yimp, Yimp2, Y.cat, X, Z, clus,betait,uit,bpost,upost,covit,opost, covuit,cpost,nbetween, l1cov.prior,l2cov.prior,Y.numcat, 0,ait,a.prior, out.iter, fixed, 0, miss.pat.id, n.patterns, PACKAGE = "jomo")
      betapost[,,(i-1)]=bpost
      upostall[,,(i-1)]=upost
      omegapost[,,(i-1)]=opost
      covupost[,,(i-1)]=cpost
      bpost<-matrix(0,nrow(beta.start),ncol(beta.start))
      opost<-matrix(0,nrow(l1cov.start),ncol(l1cov.start))
      upost<-matrix(0,nrow(u.start),ncol(u.start))
      cpost<-matrix(0,nrow(l2cov.start),ncol(l2cov.start))
      imp[(i*nrow(X)+1):((i+1)*nrow(X)),1:ncol(Y)]=Y.cat
      if (output==1) cat("Imputation number ", i, "registered", "\n")
    }
    imp<-data.frame(imp)
    for (i in 1:ncol(Y)) {
      imp[,i]<-as.factor(imp[,i]) 
      levels(imp[,i])<-previous_levels[[i]]
    }
    imp[,(ncol(Y)+ncol(X)+ncol(Z)+1)]<-factor(imp[,(ncol(Y)+ncol(X)+ncol(Z)+1)])
    levels(imp[,(ncol(Y)+ncol(X)+ncol(Z)+1)])<-previous_levels_clus
    clus<-factor(clus)
    levels(clus)<-previous_levels_clus
    for (j in (ncol(Y.cat)+1):(ncol(Y.cat)+ncol(X)+ncol(Z))) {
      imp[,j]=as.numeric(imp[,j])
    }
    if (is.null(colnamycat)) colnamycat=paste("Ycat", 1:ncol(Y.cat), sep = "")
    if (is.null(colnamz)) colnamz=paste("Z", 1:ncol(Z), sep = "")
    if (is.null(colnamx)) colnamx=paste("X", 1:ncol(X), sep = "")
    colnames(imp)<-c(colnamycat,colnamx,colnamz,"clus","id","Imputation")
    cnycatcomp<-rep(NA,(sum(Y.numcat)-length(Y.numcat)))
    count=0
    for ( j in 1:ncol(Y.cat)) {
      for (k in 1:(Y.numcat[j]-1)) {
        cnycatcomp[count+k]<-paste(colnamycat[j],k,sep=".")
      }
      count=count+Y.numcat[j]-1
    }
    dimnames(betapost)[1] <- list(colnamx)
    dimnames(betapost)[2] <- list(cnycatcomp)
    dimnames(omegapost)[1] <- list(paste(cnycatcomp,rep(levels(clus),each=ncol(Yimp2)), sep="."))
    dimnames(omegapost)[2] <- list(cnycatcomp)
    colnamcovu<-paste(cnycatcomp,rep(colnamz,each=ncol(omegapost)),sep="*")
    dimnames(covupost)[1] <- list(colnamcovu)
    dimnames(covupost)[2] <- list(colnamcovu)
    dimnames(upostall)[1]<-list(levels(clus))
    dimnames(upostall)[2]<-list(colnamcovu)
    betapostmean<-data.frame(apply(betapost, c(1,2), mean))    
    upostmean<-data.frame(apply(upostall, c(1,2), mean))
    omegapostmean<-data.frame(apply(omegapost, c(1,2), mean))
    covupostmean<-data.frame(apply(covupost, c(1,2), mean))
    if (output==1) {
      cat("The posterior mean of the fixed effects estimates is:\n")
      print(t(betapostmean))
      cat("\nThe posterior mean of the random effects estimates is:\n")
      print(upostmean)
      cat("\nThe posterior mean of the level 1 covariance matrices is:\n")
      print(omegapostmean)
      cat("\nThe posterior mean of the level 2 covariance matrix is:\n")
      print(covupostmean)
    }
    return(imp)
  }

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jomo documentation built on April 15, 2023, 5:07 p.m.