Robustness, structure and hierarchy in deep generative models
<p>Deep learning provides us with ever-more-sophisticated neural networks that can be tuned via gradient ascent to maximise some objective. Bayesian statistics provides us with a principled and unified approach to specify statistical models and to perform inference. One productive way to pair...
Main Author: | Willetts, MJF |
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Other Authors: | Holmes, C |
Format: | Thesis |
Language: | Englinsh |
Published: |
2021
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Subjects: |
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