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Enhancing Deep Learning with Bayesian Inference

You're reading from  Enhancing Deep Learning with Bayesian Inference

Product type Book
Published in Jun 2023
Publisher Packt
ISBN-13 9781803246888
Pages 386 pages
Edition 1st Edition
Languages
Authors (3):
Matt Benatan Matt Benatan
Profile icon Matt Benatan
Jochem Gietema Jochem Gietema
Profile icon Jochem Gietema
Marian Schneider Marian Schneider
Profile icon Marian Schneider
View More author details

Table of Contents (11) Chapters

Preface Chapter 1: Bayesian Inference in the Age of Deep Learning Chapter 2: Fundamentals of Bayesian Inference Chapter 3: Fundamentals of Deep Learning Chapter 4: Introducing Bayesian Deep Learning Chapter 5: Principled Approaches for Bayesian Deep Learning Chapter 6: Using the Standard Toolbox for Bayesian Deep Learning Chapter 7: Practical Considerations for Bayesian Deep Learning Chapter 8: Applying Bayesian Deep Learning Chapter 9: Next Steps in Bayesian Deep Learning Why subscribe?

6.5 Summary

In this chapter, we’ve seen how familiar machine learning and deep learning concepts can be used to develop models with predictive uncertainties. We’ve also seen how, with relatively minor modifications, we can add uncertain estimates to pre-trained models. This means we can go beyond the point-estimate approach of standard NNs: using uncertainties to gain valuable insights into the performance of our models, and allowing us to develop more robust applications.

However, as with the methods introduced in Chapter 5, Principled Approaches for Bayesian Deep Learning, all techniques have advantages and disadvantages. For example, last-layer methods may give us the flexibility to add uncertainties to any model, but they’re limited by the representation that the model has already learned. This could result in very low variance outputs, resulting in an overconfident model. Similarly, while ensemble methods allow us to capture variance across every layer...

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