Bayesian sparse reconstruction: a brute-force approach to astronomical imaging and machine learning

09/12/2018
by   Edward Higson, et al.
0

We present a principled Bayesian framework for signal reconstruction, in which the signal is modelled by basis functions whose number (and form, if required) is determined by the data themselves. This approach is based on a Bayesian interpretation of conventional sparse reconstruction and regularisation techniques, in which sparsity is imposed through priors via Bayesian model selection. We demonstrate our method for noisy 1- and 2-dimensional signals, including astronomical images. Furthermore, by using a product-space approach, the number and type of basis functions can be treated as integer parameters and their posterior distributions sampled directly. We show that order-of-magnitude increases in computational efficiency are possible from this technique compared to calculating the Bayesian evidences separately, and that further computational gains are possible using it in combination with dynamic nested sampling. Our approach can be readily applied to neural networks, where it allows the network architecture to be determined by the data in a principled Bayesian manner by treating the number of nodes and hidden layers as parameters.

READ FULL TEXT

page 8

page 9

page 12

page 13

page 16

page 17

research
05/29/2017

Model Selection in Bayesian Neural Networks via Horseshoe Priors

Bayesian Neural Networks (BNNs) have recently received increasing attent...
research
10/09/2016

Nonparametric Bayesian inference of the microcanonical stochastic block model

A principled approach to characterize the hidden structure of networks i...
research
08/13/2019

Bayesian automated posterior repartitioning for nested sampling

Priors in Bayesian analyses often encode informative domain knowledge th...
research
05/25/2023

Bayesian Analysis for Over-parameterized Linear Model without Sparsity

In high-dimensional Bayesian statistics, several methods have been devel...
research
03/03/2016

Sparse model selection in the highly under-sampled regime

We propose a method for recovering the structure of a sparse undirected ...
research
09/21/2007

A Bayesian Approach to Network Modularity

We present an efficient, principled, and interpretable technique for inf...
research
07/07/2017

Fast Stochastic Hierarchical Bayesian MAP for Tomographic Imaging

Any image recovery algorithm attempts to achieve the highest quality rec...

Please sign up or login with your details

Forgot password? Click here to reset