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1
Introduction
2
Background
3
Outline
4
Bayesian Neural Networks
5
Nonbasing training
6
Bayesian approach
7
Prior distribution
8
Smooth functions
9
Symmetric stable distributions
10
Standard deviation
11
Hyperparameters
12
Prediction
13
Benefits
14
Bayesian inference
15
Markov chain Monte Carlo
16
Hamiltonian Monte Carlo
17
Flexible Bayesian Modeling Software
18
Virus Bioresponse
19
Training Validation Errors
20
Predictive Performance
21
CFAR 10 Training
22
Questions
Description:
Explore Markov chain Monte Carlo (MCMC) methods for training Bayesian neural networks in this comprehensive lecture by Radford Neal from the University of Toronto. Delve into the background, outline, and key concepts of Bayesian neural networks, including nonbasing training, prior distributions, and symmetric stable distributions. Examine the benefits of Bayesian inference and the application of Hamiltonian Monte Carlo. Learn about the Flexible Bayesian Modeling Software and its practical applications in virus bioresponse prediction and CFAR 10 training. Gain insights into training validation errors and predictive performance, concluding with a Q&A session to address audience inquiries.

MCMC Training of Bayesian Neural Networks

Fields Institute
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