示例#1
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    likelihood="bernoulli")

#train mu network
run_auto_lr_range(train_loader, bae_model)
bae_model.fit(train_loader, num_epochs=10)

#for each model, evaluate and plot:
bae_models = [bae_model]
id_data_test = test_loader
ood_data_list = [ood_loader]
train_set_name = "CIFAR"

#run evaluation test of model on ood data set
run_test_model(bae_models=bae_models,
               id_data_test=test_loader,
               ood_data_list=ood_data_list,
               id_data_name=train_set_name,
               output_reshape_size=(32, 32, 3))

#experimental here
x_test = get_sample_dataloader(test_loader)[0].cuda()
x_ood = get_sample_dataloader(ood_loader)[0].cuda()
test_latent = bae_model.predict_latent(x_test, transform_pca=False)
ood_latent = bae_model.predict_latent(x_ood, transform_pca=False)

plt.figure()
plt.boxplot([test_latent[0].mean(1), ood_latent[0].mean(1)])

plt.figure()
plt.boxplot([test_latent[1].mean(1), ood_latent[1].mean(1)])
示例#2
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                           last_activation="sigmoid")  #symmetrical to encoder

#combine them into autoencoder
autoencoder = Autoencoder(encoder, decoder_mu)

#convert into BAE-MCDropout
bae_mcdropout = BAE_MCDropout(autoencoder=autoencoder,
                              dropout_p=0.2,
                              num_train_samples=5,
                              num_samples=50,
                              use_cuda=use_cuda,
                              denoising_factor=noise_factor)

#train mu network
run_auto_lr_range(train_loader, bae_mcdropout)
bae_mcdropout.fit(train_loader, num_epochs=1)

#for each model, evaluate and plot:
bae_models = [bae_mcdropout]
id_data_test = test_loader
ood_data_list = [ood_loader, noisy_loader]
train_set_name = "FashionMNIST"

#run evaluation test of model on ood data set
run_test_model(bae_models=bae_models,
               id_data_test=test_loader,
               ood_data_names=["OOD", "NOISY"],
               ood_data_list=ood_data_list,
               id_data_name=train_set_name,
               output_reshape_size=(28, 28))