Pytorch implementations of Bayes By Backprop, MC Dropout, SGLD, the Local Reparametrization Trick, KF-Laplace, SG-HMC and more

Overview

Bayesian Neural Networks

License: MIT Python 2.7+ Pytorch 1.0

Pytorch implementations for the following approximate inference methods:

We also provide code for:

Prerequisites

  • 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.

Usage

Structure

Regression experiments

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.

MNIST classification experiments

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.

Bayes by Backprop (BBP)

(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.

Local Reparametrisation Trick

(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]]

MC Dropout

(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

Stochastic Gradient Langevin Dynamics (SGLD)

(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

pSGLD

(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]]

Bootstrap MAP Ensemble

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

Kronecker-Factorised Laplace

(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

Stochastic Gradient Hamiltonian Monte Carlo

(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

Approximate Inference in Neural Networks

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.

Uncertainty Decomposition

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.

Results

Homoscedastic Regression

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.

Heteroscedastic Regression

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).

Regression on UCI datasets

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.

MNIST Classification

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:

MNIST Uncertainty

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:

Adversarial robustness

Total, aleatoric and epistemic uncertainties obtained when feeding our models with adversarial samples (fgsm).

Weight Distributions

Histograms of weights sampled from each model trained on MNIST. We draw 10 samples of w for each model.

Weight Pruning

#TODO

Owner
Machine Learning PhD student at University of Cambridge. Telecommunications (EE/CS) engineer.
GalaXC: Graph Neural Networks with Labelwise Attention for Extreme Classification

GalaXC GalaXC: Graph Neural Networks with Labelwise Attention for Extreme Classification @InProceedings{Saini21, author = {Saini, D. and Jain,

Extreme Classification 28 Dec 05, 2022
Learning to Adapt Structured Output Space for Semantic Segmentation, CVPR 2018 (spotlight)

Learning to Adapt Structured Output Space for Semantic Segmentation Pytorch implementation of our method for adapting semantic segmentation from the s

Yi-Hsuan Tsai 782 Dec 30, 2022
An implementation of Video Frame Interpolation via Adaptive Separable Convolution using PyTorch

This work has now been superseded by: https://github.com/sniklaus/revisiting-sepconv sepconv-slomo This is a reference implementation of Video Frame I

Simon Niklaus 984 Dec 16, 2022
Final project for Intro to CS class.

Financial Analysis Web App https://share.streamlit.io/mayurk1/fin-web-app-final-project/webApp.py 1. Project Description This project is a technical a

Mayur Khanna 1 Dec 10, 2021
Implementation of popular bandit algorithms in batch environments.

batch-bandits Implementation of popular bandit algorithms in batch environments. Source code to our paper "The Impact of Batch Learning in Stochastic

Danil Provodin 2 Sep 11, 2022
Mercury: easily convert Python notebook to web app and share with others

Mercury Share your Python notebooks with others Easily convert your Python notebooks into interactive web apps by adding parameters in YAML. Simply ad

MLJAR 2.2k Dec 27, 2022
Offline Multi-Agent Reinforcement Learning Implementations: Solving Overcooked Game with Data-Driven Method

Overcooked-AI We suppose to apply traditional offline reinforcement learning technique to multi-agent algorithm. In this repository, we implemented be

Baek In-Chang 14 Sep 16, 2022
Make differentially private training of transformers easy for everyone

private-transformers This codebase facilitates fast experimentation of differentially private training of Hugging Face transformers. What is this? Why

Xuechen Li 73 Dec 28, 2022
The official implementation for "FQ-ViT: Fully Quantized Vision Transformer without Retraining".

FQ-ViT [arXiv] This repo contains the official implementation of "FQ-ViT: Fully Quantized Vision Transformer without Retraining". Table of Contents In

132 Jan 08, 2023
For storing the complete exploration of Visual Question Answering for our B.Tech Project

Multi-Image vqa @authors: Akhilesh, Janhavi, Harsh Paper summary, Ideas tried and their corresponding results: on wiki Other discussions: on discussio

Harsh Raj 3 Jun 16, 2022
내가 보려고 정리한 <프로그래밍 기초 Ⅰ> / organized for me

Programming-Basics 프로그래밍 기초 Ⅰ 아카이브 Do it! 점프 투 파이썬 주차 강의주제 비고 1주차 Syllabus 2주차 자료형 - 숫자형 3주차 자료형 - 문자열형 4주차 입력과 출력 5주차 제어문 - 조건문 if 6주차 제어문 - 반복문 whil

KIMMINSEO 1 Mar 07, 2022
FEDn is an open-source, modular and ML-framework agnostic framework for Federated Machine Learning

FEDn is an open-source, modular and ML-framework agnostic framework for Federated Machine Learning (FedML) developed and maintained by Scaleout Systems. FEDn enables highly scalable cross-silo and cr

Scaleout 75 Nov 09, 2022
Locally Differentially Private Distributed Deep Learning via Knowledge Distillation (LDP-DL)

Locally Differentially Private Distributed Deep Learning via Knowledge Distillation (LDP-DL) A preprint version of our paper: Link here This is a samp

Di Zhuang 3 Jan 08, 2023
Pytorch implementation of Cut-Thumbnail in the paper Cut-Thumbnail:A Novel Data Augmentation for Convolutional Neural Network.

Cut-Thumbnail (Accepted at ACM MULTIMEDIA 2021) Tianshu Xie, Xuan Cheng, Xiaomin Wang, Minghui Liu, Jiali Deng, Tao Zhou, Ming Liu This is the officia

3 Apr 12, 2022
Implementation of Geometric Vector Perceptron, a simple circuit for 3d rotation equivariance for learning over large biomolecules, in Pytorch. Idea proposed and accepted at ICLR 2021

Geometric Vector Perceptron Implementation of Geometric Vector Perceptron, a simple circuit with 3d rotation equivariance for learning over large biom

Phil Wang 59 Nov 24, 2022
MODNet: Trimap-Free Portrait Matting in Real Time

MODNet is a model for real-time portrait matting with only RGB image input.

Zhanghan Ke 2.8k Dec 30, 2022
The World of an Octopus: How Reporting Bias Influences a Language Model's Perception of Color

The World of an Octopus: How Reporting Bias Influences a Language Model's Perception of Color Overview Code and dataset for The World of an Octopus: H

1 Nov 13, 2021
Karate Club: An API Oriented Open-source Python Framework for Unsupervised Learning on Graphs (CIKM 2020)

Karate Club is an unsupervised machine learning extension library for NetworkX. Please look at the Documentation, relevant Paper, Promo Video, and Ext

Benedek Rozemberczki 1.8k Jan 07, 2023
Yolov3 pytorch implementation

YOLOV3 Pytorch实现 在bubbliiing大佬代码的基础上进行了修改,添加了部分注释。 预训练模型 预训练模型来源于bubbliiing。 链接:https://pan.baidu.com/s/1ncREw6Na9ycZptdxiVMApw 提取码:appk 训练自己的数据集 按照VO

4 Aug 27, 2022
ADOP: Approximate Differentiable One-Pixel Point Rendering

ADOP: Approximate Differentiable One-Pixel Point Rendering Abstract: We present a novel point-based, differentiable neural rendering pipeline for scen

Darius Rückert 1.9k Jan 06, 2023