Sampling-based inference for large linear models, with application to linearised Laplace

10/10/2022
by   Javier Antoran, et al.
0

Large-scale linear models are ubiquitous throughout machine learning, with contemporary application as surrogate models for neural network uncertainty quantification; that is, the linearised Laplace method. Alas, the computational cost associated with Bayesian linear models constrains this method's application to small networks, small output spaces and small datasets. We address this limitation by introducing a scalable sample-based Bayesian inference method for conjugate Gaussian multi-output linear models, together with a matching method for hyperparameter (regularisation) selection. Furthermore, we use a classic feature normalisation method (the g-prior) to resolve a previously highlighted pathology of the linearised Laplace method. Together, these contributions allow us to perform linearised neural network inference with ResNet-18 on CIFAR100 (11M parameters, 100 output dimensions x 50k datapoints) and with a U-Net on a high-resolution tomographic reconstruction task (2M parameters, 251k output dimensions).

READ FULL TEXT
research
05/07/2021

Laplace Matching for fast Approximate Inference in Generalized Linear Models

Bayesian inference in generalized linear models (GLMs), i.e. Gaussian re...
research
07/11/2017

Fast Amortized Inference and Learning in Log-linear Models with Randomly Perturbed Nearest Neighbor Search

Inference in log-linear models scales linearly in the size of output spa...
research
02/28/2022

A Probabilistic Deep Image Prior for Computational Tomography

Existing deep-learning based tomographic image reconstruction methods do...
research
09/16/2020

Computationally Efficient Deep Bayesian Unit-Level Modeling of Survey Data under Informative Sampling for Small Area Estimation

The topic of deep learning has seen a surge of interest in recent years ...
research
11/07/2017

Distributed Bayesian Piecewise Sparse Linear Models

The importance of interpretability of machine learning models has been i...
research
08/14/2020

Data-Informed Decomposition for Localized Uncertainty Quantification of Dynamical Systems

Industrial dynamical systems often exhibit multi-scale response due to m...
research
07/09/2021

L2M: Practical posterior Laplace approximation with optimization-driven second moment estimation

Uncertainty quantification for deep neural networks has recently evolved...

Please sign up or login with your details

Forgot password? Click here to reset