Topics in Bayesian Computing
2022-11-29
Foreword
This e-book is a collection of modules on contemporary topics in Bayesian computing. It was written as a homework assignment by the students of STAT 946 taught in Spring 2020 at the University of Waterloo.
Table of Contents
- Basics of Bayesian Inference: Martin Lysy. 
- Basics of Markov Chain Monte Carlo: Martin Lysy. 
- Hamiltonian Monte Carlo: Yunfeng Yang and Ye Meng. 
- Stochastic Differential Equationss: Hyunjin-Dominique Cho, Hytham Farah, and Francis Han. 
- Particle Filters: Jason Hou-Liu and Michelle Ko. 
- Gaussian Process Regression: Meixi Chen and Yuan Tian. 
- Bayesian Nonparametrics: JunYong Tong and Nicholas Torenvliet. 
- Laplace Approximation: Augustine Wigle. 
- Approximate Bayesian Methods: Bo Yuan Chang. 
- Variational Inference: Tim Dockhorn. 
Contributing
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