## ----echo = FALSE------------------------------------------------------------- knitr::opts_chunk$set(collapse = TRUE, comment = "#>") ## ----setup, message=FALSE----------------------------------------------------- library(smriti) set.seed(20250601) n <- 200; t_points <- 4 # ── Generate clean data with a linear growth process ────────────────────── generate_data <- function(n, add_outliers = FALSE) { latent_intercept <- rnorm(n, 6, 1) latent_slope <- rnorm(n, 2, 1) data_mat <- matrix(0, n, t_points) for (j in seq_len(t_points)) { data_mat[, j] <- latent_intercept + (j - 1) * latent_slope + rnorm(n, 0, 1) } if (add_outliers) { idx <- sample(seq_len(n), floor(0.05 * n)) data_mat[idx, ] <- data_mat[idx, ] + 5.0 # +5 SD shift } colnames(data_mat) <- paste0("T", seq_len(t_points)) as.data.frame(data_mat) } df_clean <- generate_data(n, add_outliers = FALSE) df_outlier <- generate_data(n, add_outliers = TRUE) # ── Induce 15% MAR missingness (same pattern for both) ──────────────────── set.seed(42) apply_mar <- function(df) { df_miss <- df for (t in 1:(t_points - 1)) { idx <- which(!is.na(df_miss[, t])) x_prev <- scale(df_miss[idx, t]) p_miss <- 1 / (1 + exp(-(x_prev - qnorm(1 - 0.15)))) drop_idx <- idx[rbinom(length(idx), 1, p_miss) == 1] df_miss[drop_idx, t + 1] <- NA } df_miss } df_clean_miss <- apply_mar(df_clean) df_outlier_miss <- apply_mar(df_outlier) cat("Clean data missingness: ", sum(is.na(df_clean_miss)), "cells\n") cat("Outlier data missingness:", sum(is.na(df_outlier_miss)), "cells\n") ## ----clean-comparison, eval=FALSE--------------------------------------------- # # On clean Normal data, default and robust modes produce similar results. # imp_clean_default <- smriti_impute(df_clean_miss, time_cols = 1:4, robust = FALSE) # imp_clean_robust <- smriti_impute(df_clean_miss, time_cols = 1:4, robust = TRUE) ## ----outlier-comparison, eval=FALSE------------------------------------------- # # On outlier-contaminated data, the robust mode preserves the true structure. # imp_outlier_default <- smriti_impute(df_outlier_miss, time_cols = 1:4, # robust = FALSE) # imp_outlier_robust <- smriti_impute(df_outlier_miss, time_cols = 1:4, # robust = TRUE) # # # Compare recovered covariance against the true (clean) population matrix. # true_cov <- cov(df_clean[, 1:4]) # no missingness, no outliers # # cat("Default mode Frobenius distance from truth:", # sqrt(sum((cov(imp_outlier_default[, 1:4]) - true_cov)^2)), "\n") # cat("Robust mode Frobenius distance from truth:", # sqrt(sum((cov(imp_outlier_robust[, 1:4]) - true_cov)^2)), "\n") ## ----wrappers, eval=FALSE----------------------------------------------------- # # missForest + smriti robust refinement # smriti_forest(df, time_cols = 1:4, robust = TRUE) # # # missRanger + smriti robust refinement # smriti_ranger(df, time_cols = 1:4, robust = TRUE) # # # Multiple imputation with robust targets on every replicate # smriti_mi(df, time_cols = 1:4, m = 10, robust = TRUE)