Pytorch implementations for the following approximate inference methods:
- Bayes by Backprop
- Bayes by Backprop + Local Reparametrisation Trick
- MC dropout
- Stochastic Gradient Langevin Dynamics
- Preconditioned SGLD
- Kronecker-Factorised Laplace Approximation
- Stochastic Gradient Hamiltonian Monte Carlo with Scale Adaption
We also provide code for:
- PyTorch
- Numpy
- Matplotlib
The project is written in python 2.7 and Pytorch 1.0.1. If CUDA is available, it will be used automatically. The models can also run on CPU as they are not excessively big.
We carried out homoscedastic and heteroscedastic regression experiements on toy datasets, generated with (Gaussian Process ground truth), as well as on real data (six UCI datasets).
Notebooks/classification/(ModelName)_(ExperimentType).ipynb: Contains experiments using (ModelName) on (ExperimentType), i.e. homoscedastic/heteroscedastic. The heteroscedastic notebooks contain both toy and UCI dataset experiments for a given (ModelName).
We also provide Google Colab notebooks. This means that you can run on a GPU (for free!). No modifications required - all dependencies and datasets are added from within the notebooks - except for selecting Runtime -> Change runtime type -> Hardware accelerator -> GPU.
train_(ModelName)_(Dataset).py: Trains (ModelName) on (Dataset). Training metrics and model weights will be saved to the specified directories.
src/: General utilities and model definitions.
Notebooks/classification: An asortment of notebooks which allow for model training, evaluation and running of digit rotation uncertainty experiments. They also allow for weight distribution plotting and weight pruning. They allow for loading of pre-trained models for experimentation.
(https://arxiv.org/abs/1505.05424)
Colab notebooks with regression models: BBP homoscedastic / heteroscedastic
Train a model on MNIST:
python train_BayesByBackprop_MNIST.py [--model [MODEL]] [--prior_sig [PRIOR_SIG]] [--epochs [EPOCHS]] [--lr [LR]] [--n_samples [N_SAMPLES]] [--models_dir [MODELS_DIR]] [--results_dir [RESULTS_DIR]]
For an explanation of the script's arguments:
python train_BayesByBackprop_MNIST.py -h
Best results are obtained with a Laplace prior.
(https://arxiv.org/abs/1506.02557)
Bayes By Backprop inference where the mean and variance of activations are calculated in closed form. Activations are sampled instead of weights. This makes the variance of the Monte Carlo ELBO estimator scale as 1/M, where M is the minibatch size. Sampling weights scales (M-1)/M. The KL divergence between gaussians can also be computed in closed form, further reducing variance. Computation of each epoch is faster and so is convergence.
Train a model on MNIST:
python train_BayesByBackprop_MNIST.py --model Local_Reparam [--prior_sig [PRIOR_SIG]] [--epochs [EPOCHS]] [--lr [LR]] [--n_samples [N_SAMPLES]] [--models_dir [MODELS_DIR]] [--results_dir [RESULTS_DIR]]
(https://arxiv.org/abs/1506.02142)
A fixed dropout rate of 0.5 is set.
Colab notebooks with regression models: MC Dropout homoscedastic heteroscedastic
Train a model on MNIST:
python train_MCDropout_MNIST.py [--weight_decay [WEIGHT_DECAY]] [--epochs [EPOCHS]] [--lr [LR]] [--models_dir [MODELS_DIR]] [--results_dir [RESULTS_DIR]]
For an explanation of the script's arguments:
python train_MCDropout_MNIST.py -h
(https://www.ics.uci.edu/~welling/publications/papers/stoclangevin_v6.pdf)
In order to converge to the true posterior over w, the learning rate should be annealed according to the Robbins-Monro conditions. In practise, we use a fixed learning rate.
Colab notebooks with regression models: SGLD homoscedastic / heteroscedastic
Train a model on MNIST:
python train_SGLD_MNIST.py [--use_preconditioning [USE_PRECONDITIONING]] [--prior_sig [PRIOR_SIG]] [--epochs [EPOCHS]] [--lr [LR]] [--models_dir [MODELS_DIR]] [--results_dir [RESULTS_DIR]]
For an explanation of the script's arguments:
python train_SGLD_MNIST.py -h
(https://arxiv.org/abs/1512.07666)
SGLD with RMSprop preconditioning. A higher learning rate should be used than for vanilla SGLD.
Train a model on MNIST:
python train_SGLD_MNIST.py --use_preconditioning True [--prior_sig [PRIOR_SIG]] [--epochs [EPOCHS]] [--lr [LR]] [--models_dir [MODELS_DIR]] [--results_dir [RESULTS_DIR]]
Multiple networks are trained on subsamples of the dataset.
Colab notebooks with regression models: MAP Ensemble homoscedastic / heteroscedastic
Train an ensemble on MNIST:
python train_Bootrap_Ensemble_MNIST.py [--weight_decay [WEIGHT_DECAY]] [--subsample [SUBSAMPLE]] [--n_nets [N_NETS]] [--epochs [EPOCHS]] [--lr [LR]] [--models_dir [MODELS_DIR]] [--results_dir [RESULTS_DIR]]
For an explanation of the script's arguments:
python train_Bootrap_Ensemble_MNIST.py -h
(https://openreview.net/pdf?id=Skdvd2xAZ)
Train a MAP network and then calculate a second order taylor series aproxiamtion to the curvature around a mode of the posterior. A block diagonal Hessian approximation is used, where only intra-layer dependencies are accounted for. The Hessian is further approximated as the kronecker product of the expectation of a single datapoint's Hessian factors. Approximating the Hessian can take a while. Fortunately it only needs to be done once.
Train a MAP network on MNIST and approximate Hessian:
python train_KFLaplace_MNIST.py [--weight_decay [WEIGHT_DECAY]] [--hessian_diag_sig [HESSIAN_DIAG_SIG]] [--epochs [EPOCHS]] [--lr [LR]] [--models_dir [MODELS_DIR]] [--results_dir [RESULTS_DIR]]
For an explanation of the script's arguments:
python train_KFLaplace_MNIST.py -h
Note that we save the unscaled and uninverted Hessian factors. This will allow for computationally cheap changes to the prior at inference time as the Hessian will not need to be re-computed. Inference will require inverting the approximated Hessian factors and sampling from a matrix normal distribution. This is shown in notebooks/KFAC_Laplace_MNIST.ipynb
(https://arxiv.org/abs/1402.4102)
We implement the scale-adapted version of this algorithm, proposed here to find hyperparameters automatically during burn-in. We place a Gaussian prior over network weights and a Gamma hyperprior over the Gaussian's precision.
Run SG-HMC-SA burn in and sampler, saving weights in specified file.
python train_SGHMC_MNIST.py [--epochs [EPOCHS]] [--sample_freq [SAMPLE_FREQ]] [--burn_in [BURN_IN]] [--lr [LR]] [--models_dir [MODELS_DIR]] [--results_dir [RESULTS_DIR]]
For an explanation of the script's arguments:
python train_SGHMC_MNIST.py -h
Map inference provides a point estimate of parameter values. When provided with out of distribution inputs, such as rotated digits, these models then to make wrong predictions with high confidence.
We can measure uncertainty in our models' predictions through predictive entropy. We can decompose this term in order to distinguish between 2 types of uncertainty. Uncertainty caused by noise in the data, or Aleatoric uncertainty, can be quantified as the expected entropy of model predictions. Model uncertainty or Epistemic uncertainty can be measured as the difference between total entropy and aleatoric entropy.
Toy homoscedastic regression task. Data is generated by a GP with a RBF kernel (l = 1, σn = 0.3). We use a single-output FC network with one hidden layer of 200 ReLU units to predict the regression mean μ(x). A fixed log σ is learnt separately.
Same scenario as previous section but log σ(x) is predicted from the input.
Toy heteroscedastic regression task. Data is generated by a GP with a RBF kernel (l = 1 σn = 0.3 · |x + 2|). We use a two-head network with 200 ReLU units to predict the regression mean μ(x) and log-standard deviation log σ(x).
We performed heteroscedastic regression on the six UCI datasets (housing, concrete, energy efficiency, power plant, red wine and yacht datasets), using 10-foild cross validation. All these experiments are contained in the heteroscedastic notebooks. Note that results depend heavily on hyperparameter selection. Plots below show log-likelihoods and RMSEs on the train (semi-transparent colour) and test (solid colour). Circles and error bars correspond to the 10-fold cross validation mean and standard deviations respectively.
W is marginalised with 100 samples of the weights for all models except MAP, where only one set of weights is used.
MNIST Test | MAP | MAP Ensemble | BBP Gaussian | BBP GMM | BBP Laplace | BBP Local Reparam | MC Dropout | SGLD | pSGLD |
---|---|---|---|---|---|---|---|---|---|
Log Like | -572.9 | -496.54 | -1100.29 | -1008.28 | -892.85 | -1086.43 | -435.458 | -828.29 | -661.25 |
Error % | 1.58 | 1.53 | 2.60 | 2.38 | 2.28 | 2.61 | 1.37 | 1.76 | 1.76 |
MNIST test results for methods under consideration. Estensive hyperparameter tunning has not been performed. We approximate the posterior predictive distribution with 100 MC samples. We use a FC network with two 1200 unit ReLU layers. If unspecified, the prior is Gaussian with std=0.1. P-SGLD uses RMSprop preconditioning.
The original paper for Bayes By Backprop reports around 1% error on MNIST. We find that this result is attainable only if approximate posterior variances are initialised to be very small (BBP Gauss 2). In this scenario, the distributions over weights resemble deltas, giving good predictive performance but bad uncertainty estimates. However, when initialising the variances to match the prior (BBP Gauss 1), we obtain the above results. The training curves for both of these hyperparameter configuration schemes are shown below:
Total, aleatoric and epistemic uncertainties obtained when creating OOD samples by augmenting the MNIST test set with rotations:
Total and epistemic uncertainties obtained by testing our models, - which have been trained on MNIST -, on the KMNIST dataset:
Total, aleatoric and epistemic uncertainties obtained when feeding our models with adversarial samples (fgsm).
Histograms of weights sampled from each model trained on MNIST. We draw 10 samples of w for each model.
#TODO