## ----setup, include=FALSE----------------------------------------------------- options(rmarkdown.html_vignette.check_title = FALSE) ## ----------------------------------------------------------------------------- set.seed(123) #Number of rows to be generated n <- 1000000 #creating dataset dataset <- data.frame( Var_1 = round(rnorm(n, mean = 50, sd = 10)), Var_2 = round(rnorm(n, mean = 7.5, sd = 2.1)), Var_3 = as.factor(sample(c("0", "1"), n, replace = TRUE)), Var_4 = as.factor(sample(c("0", "1", "2"), n, replace = TRUE)), Var_5 = as.factor(sample(0:15, n, replace = TRUE)), Var_6 = round(rnorm(n, mean = 60, sd = 5)) ) # Save the dataset to a temporary file temp_file <- tempfile(fileext = ".csv") write.csv(dataset, file = temp_file, row.names = FALSE) # Path to the temporary file dataset_path <- temp_file dataset_path # Display the path to the temporary file ## ----------------------------------------------------------------------------- # Path to the temporary file dataset_path <- temp_file dataset_path # Display the path to the temporary file # Initialize the data reading function with the data set path and chunk size da <- drglm::make.data(dataset_path, chunksize = 100000) ## ----------------------------------------------------------------------------- # Fitting MLR Model nmodel <- drglm::big.drglm(da, formula = Var_1 ~ Var_2+ factor(Var_3)+ factor(Var_4)+ factor(Var_5)+ Var_6, 10, family="gaussian") # View the results table print(nmodel) ## ----------------------------------------------------------------------------- # Fitting Logistic Model bmodel <- drglm::big.drglm(da,formula = Var_3 ~ Var_1+ Var_2+ factor(Var_4)+ factor(Var_5)+ Var_6, 10, family="binomial") # View the results table print(bmodel) ## ----------------------------------------------------------------------------- # Fitting Poisson Regression Model pmodel <- drglm::big.drglm(da, formula = Var_5 ~ Var_1+ Var_2+ factor(Var_3)+ factor(Var_4)+ Var_6, 10, family="poisson") # View the results table print(pmodel)