TL;DR
This paper uses variational inference to quantify uncertainty in deep learning radio galaxy classification, showing correlations with human labels, exploring pruning and calibration, and discussing the cold posterior effect.
Contribution
It introduces a Bayesian approach to quantify uncertainty, analyzes pruning strategies, and investigates the cold posterior effect in radio galaxy classification.
Findings
Model posterior variance correlates with human uncertainty.
Sparse priors yield better uncertainty calibration.
Pruning 30% of weights maintains performance.
Abstract
In this work we use variational inference to quantify the degree of uncertainty in deep learning model predictions of radio galaxy classification. We show that the level of model posterior variance for individual test samples is correlated with human uncertainty when labelling radio galaxies. We explore the model performance and uncertainty calibration for different weight priors and suggest that a sparse prior produces more well-calibrated uncertainty estimates. Using the posterior distributions for individual weights, we demonstrate that we can prune 30% of the fully-connected layer weights without significant loss of performance by removing the weights with the lowest signal-to-noise ratio. A larger degree of pruning can be achieved using a Fisher information based ranking, but both pruning methods affect the uncertainty calibration for Fanaroff-Riley type I and type II radio…
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Taxonomy
MethodsPruning · Variational Inference
