
Sign up to save your podcasts
Or
Have you ever wanted to get an estimate of the uncertainty of your neural network? Clearly Bayesian modelling provides a solid framework to estimate uncertainty by design. However, there are many realistic cases in which Bayesian sampling is not really an option and ensemble models can play a role.
In this episode I describe a simple yet effective way to estimate uncertainty, without changing your neural network’s architecture nor your machine learning pipeline at all.
The post with mathematical background and sample source code is published here.
4.2
7272 ratings
Have you ever wanted to get an estimate of the uncertainty of your neural network? Clearly Bayesian modelling provides a solid framework to estimate uncertainty by design. However, there are many realistic cases in which Bayesian sampling is not really an option and ensemble models can play a role.
In this episode I describe a simple yet effective way to estimate uncertainty, without changing your neural network’s architecture nor your machine learning pipeline at all.
The post with mathematical background and sample source code is published here.
43,911 Listeners
11,133 Listeners
1,065 Listeners
77,550 Listeners
482 Listeners
593 Listeners
202 Listeners
298 Listeners
261 Listeners
267 Listeners
189 Listeners
2,528 Listeners
35 Listeners
2,979 Listeners
5,420 Listeners