inst/examples/ex-pmodel_long.R

library("model4you")

if(require("mvtnorm") & require("survival")) {
  
  ## function to simulate the data
  sim_data <- function(n = 500, p = 10, beta = 3, sd = 1){
    
    ## treatment
    lev <- c("C", "A")
    a <- rep(factor(lev, labels = lev, levels = lev), length = n)
    
    ## correlated z variables
    sigma <- diag(p) 
    sigma[sigma == 0] <- 0.2
    ztemp <- rmvnorm(n, sigma = sigma)
    z <- (pnorm(ztemp) * 2 * pi) - pi  
    colnames(z) <- paste0("z", 1:ncol(z))
    z1 <- z[,1]
    
    ## outcome
    y <- 7 + 0.2 * (a %in% "A") + beta * cos(z1) * (a %in% "A") + rnorm(n, 0, sd)
    
    data.frame(y = y, a = a, z)
  }
  
  ## simulate data
  set.seed(123)
  beta <- 3
  ntrain <- 500
  ntest <- 10
  simdata <- simdata_s <- sim_data(p = 5, beta = beta, n = ntrain)
  tsimdata <- tsimdata_s <- sim_data(p = 5, beta = beta, n = ntest)
  simdata_s$cens <- rep(1, ntrain)
  tsimdata_s$cens <- rep(1, ntest)
  
  ## base model
  basemodel_lm <- lm(y ~ a, data = simdata)
  basemodel_wb <- survreg(Surv(y, cens) ~ a, data = simdata_s)
  
  ## forest
  frst_lm <- pmforest(basemodel_lm, ntree = 20, 
                      perturb = list(replace = FALSE, fraction = 0.632),
                      control = ctree_control(mincriterion = 0))
  frst_wb <- pmforest(basemodel_wb, ntree = 20, 
                      perturb = list(replace = FALSE, fraction = 0.632),
                      control = ctree_control(mincriterion = 0))
  
  ## personalised models
  pmodels_lm <- pmodel(x = frst_lm, newdata = tsimdata, fun = identity)
  coefs_lm <- pmodel(x = frst_lm, newdata = tsimdata)
  
  # compare predictive log-Likelihoods of personalised models versus
  # base model
  logLik(pmodels_lm)
  sum(objfun(basemodel_lm, newdata = tsimdata))
  
  coeffun <- function(model) {
    ## model coefficients
    coefs <- c(coef(model), scale = model$scale)
    
    ## difference in median survival 
    p = 0.5
    coefs["median_s0"] <- qweibull(p = p, shape = 1/coefs["scale"], 
                                   scale = exp(coefs["(Intercept)"]))
    coefs["median_s1"] <- qweibull(p = p, shape = 1/coefs["scale"], 
                                   scale = exp(coefs["(Intercept)"] + coefs["aA"]))
    coefs["median_sdiff"] <- coefs["median_s1"] - coefs["median_s0"]
    
    return(coefs)
  }
  coefs_wb <- pmodel(x = frst_wb, newdata = tsimdata_s,
                     fun = coeffun)
  
  
  if(require("ggplot2")) {
    ## dependence plot
    dp_lm <- cbind(coefs_lm, tsimdata)
    dp_wb <- cbind(coefs_wb, tsimdata)
    ggplot(tsimdata) +
      stat_function(fun = function(z1) 0.2 + beta * cos(z1), 
                    aes(color = "true treatment\neffect")) +
      geom_point(data = dp_lm, 
                 aes(y = aA, x = z1, color = "estimates lm"), 
                 alpha = 0.5) +
      geom_point(data = dp_wb, 
                 aes(y = median_sdiff, x = z1, color = "estimates wb"), 
                 alpha = 0.5)
  }
}

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model4you documentation built on Dec. 6, 2019, 3 p.m.