## ----setup, include=FALSE----------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", eval = FALSE ) library(plssem) ## ----------------------------------------------------------------------------- # model <- "Survived ~ Age + Female + Age:Female" # fit <- pls(model, data = titanic, missing = "listwise", ordered = "Survived") ## ----------------------------------------------------------------------------- # model <- "Survived ~ Age + Female + Age:Female" # fit <- pls(model, data = titanic, missing = "mean", ordered = "Survived") ## ----------------------------------------------------------------------------- # model <- "Survived ~ Age + Female + Age:Female" # fit <- pls(model, data = titanic, missing = "kNN", # ordered = "Survived", knn.k = 5) # use the 5 nearest neighbors ## ----------------------------------------------------------------------------- # library(mice) # # m <- 20 # Number of imputations # vars <- c("Survived", "Age", "Female") # Variables to impute/use in the analysis # # imputations <- mice(titanic[vars], m = m) # # COEF <- NULL # Matrix with estimated coefficients for each imputation # BOOT <- NULL # Matrix with all the bootstraps from all imputations # # model <- "Survived ~ Age + Female + Age:Female" # # for (i in seq_len(m)) { # fit.i <- pls(model, data = complete(imputations, i), # get the ith imputation # ordered = "Survived", # bootstrap = TRUE, # boot.R = 100, # boot.parallel = "multicore", # Use parallel bootstrap # boot.ncpus = 2L) # # COEF <- rbind(COEF, coef(fit.i)) # BOOT <- rbind(BOOT, boot(fit.i)) # } # # apply(COEF, MARGIN = 2, FUN = mean) # Mean estimate across imputations # apply(BOOT, MARGIN = 2, FUN = sd) # Standard errors