Skip to content

programmer-util/prml

 
 

Repository files navigation

Pattern Recognition and Machine Learning (PRML)

MDN

This project is to document my progress in going through Christopher Bishop's PRML book. It contains notebooks to better understand the ideas presented, as well as links to helpful papers and self-made notes.

Useful Links

Content

.
├── README.md
├── chapter01
│   ├── ch1_ex_tests.ipynb
│   ├── chapter1.ipynb
│   └── einsum.ipynb
├── chapter02
│   ├── Exercises.ipynb
│   ├── bayes-binomial.ipynb
│   ├── bayes-normal.ipynb
│   ├── density-estimation.ipynb
│   ├── exponential-family.ipynb
│   ├── mixtures-of-gaussians.ipynb
│   ├── periodic-variables.ipynb
│   ├── robbins-monro.ipynb
│   └── students-t-distribution.ipynb
├── chapter03
│   ├── Bayesian-linear-regression.ipynb
│   ├── equivalent-kernel.ipynb
│   ├── evidence-approximation.ipynb
│   ├── linear-models-for-regression.ipynb
│   ├── predictive-distribution.ipynb
│   └── sequential-bayesian-learning.ipynb
├── chapter04
│   ├── exercises.ipynb
│   ├── fisher-linear-discriminant.ipynb
│   ├── least-squares-classification.ipynb
│   ├── logistic-regression.ipynb
│   └── perceptron.ipynb
├── chapter05
│   ├── Ellipses.ipynb
│   ├── backpropagation.ipynb
│   ├── bayesian-neural-networks.ipynb
│   ├── imgs
│   │   └── f51.png
│   ├── mixture-density-networks.ipynb
│   ├── soft-weight-sharing.ipynb
│   └── weight-space-symmetry.ipynb
├── chapter06
│   ├── gaussian-processes.ipynb
│   └── kernel-regression.ipynb
├── chapter07
│   └── RVMs.ipynb
├── chapter08
│   ├── Trees.ipynb
│   ├── exercises.ipynb
│   ├── graphical-model-inference.ipynb
│   ├── img.jpeg
│   ├── markov-random-fields.ipynb
│   └── sum-product.ipynb
├── chapter09
│   ├── gaussian-mixture-models.ipynb
│   ├── k-means.ipynb
│   └── mixture-of-bernoulli.ipynb
├── chapter10
│   ├── exponential-mixture-gaussians.ipynb
│   ├── local-variational-methods.ipynb
│   ├── mixture-gaussians.ipynb
│   ├── variational-logistic-regression.ipynb
│   └── variational-univariate-gaussian.ipynb
├── chapter11
│   ├── adaptive-rejection-sampling.ipynb
│   ├── gibbs-sampling.ipynb
│   ├── hybrid-montecarlo.ipynb
│   ├── markov-chain-motecarlo.ipynb
│   ├── rejection-sampling.ipynb
│   ├── slice-sampling.ipynb
│   └── transformation-random-variables.ipynb
├── chapter12
│   ├── bayesian-pca.ipynb
│   ├── kernel-pca.ipynb
│   ├── principal-component-analysis.ipynb
│   └── probabilistic-pca.ipynb
└── chapter13
    └── em-hidden-markov-model.ipynb
    └── hidden-markov-model.ipynb

About

Repository of notes, code and notebooks for the book Pattern Recognition and Machine Learning by Christopher Bishop

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors

Languages

  • Jupyter Notebook 100.0%