Fast and correct variational inference for probabilistic programming: Differentiability, reparameterisation and smoothing
<p>Probabilistic programming is an innovative programming paradigm for posing and automatically solving Bayesian inference problems. In this thesis, we study the foundations of fast yet correct inference for probabilistic programming.</p> <p>Many of the most successful inference t...
Main Author: | Wagner, D |
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Other Authors: | Ong, L |
Format: | Thesis |
Language: | English |
Published: |
2023
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Subjects: |
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