params <- list(eval = TRUE) ## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) library(LBBNN) has_torch <- requireNamespace("torch", quietly = TRUE) && torch::torch_is_installed() ## ----eval = has_torch--------------------------------------------------------- torch::torch_manual_seed(42) loaders_gs <- get_dataloaders(gallstone_dataset, train_proportion = 0.70, train_batch_size = 223, test_batch_size = 96, standardize = TRUE, seed = 42) train_loader_gs <- loaders_gs$train_loader test_loader_gs <- loaders_gs$test_loader ## ----eval = has_torch--------------------------------------------------------- problem <- "binary classification" sizes <- c(40, 16, 16, 16, 16, 1) inclusion_priors <- c(0.5, 0.5, 0.5, 0.5, 0.5) stds <- c(1, 1, 1, 1, 1) inclusion_inits <- 'polarized_dense' device <- "cpu" model_gs <- lbbnn_net(problem_type = problem, sizes = sizes, prior = inclusion_priors, flow = TRUE, dims = c(10, 10, 10, 10), inclusion_inits = inclusion_inits, input_skip = TRUE, std = stds, device = device) #print(model_gs) ## ----eval = FALSE------------------------------------------------------------- # train_lbbnn(epochs = 1000, LBBNN = model_gs, # lr = 0.005, train_dl = train_loader_gs, device = device, # verbose = FALSE) # # validate_lbbnn(LBBNN = model_gs, num_samples = 10, test_dl = test_loader_gs, # device = device) # ## ----eval = FALSE------------------------------------------------------------- # torch::torch_manual_seed(42) # model_2 <- lbbnn_net(problem_type = problem, sizes = sizes, # prior = inclusion_priors, flow = TRUE, # dims = c(10, 10, 10, 10), # inclusion_inits = inclusion_inits, # input_skip = TRUE, std = stds, device = device) # # train_lbbnn(epochs = 1000, LBBNN = model_2, # lr = 0.005, train_dl = train_loader_gs, device = device, # verbose = FALSE, min_density = 0.1) # # validate_lbbnn(LBBNN = model_2, num_samples = 10, test_dl = test_loader_gs, # device = device)