view doc/v2_planning/sampler.txt @ 1028:c6a74b24330b

coding_style: Olivier D confirmed as leader
author Olivier Delalleau <delallea@iro>
date Mon, 06 Sep 2010 20:41:51 -0400
parents 790376d986a3
children a1b6ccd5b6dc
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OVERVIEW
========

Before we start defining what a sampler is and how it should be defined in
pylearn, we should first know what we're up against. 

The workflow I have in mind is the following:
1. identify the most popular sampling algorithms in the litterature
2. get up to speed with methods we're not familiar with
3. identify common usage patterns, properties of the algorithm, etc.
4. decide on an API / best way to implement them
5. prioritize the algorithms
6. code away

1.BACKGROUND
=============

This section should provide a brief overview of what exists in the litterature.
We should make sure to have a decent understanding of all of these (not everyone
has to be experts though), so that we can *intelligently* design our sampler
interface based on common usage patterns, properties, etc.

Sampling from basic distributions
* already supported: uniform, normal, binomial, multinomial
* wish list: beta, poisson, others ?

List of sampling algorithms:

* inversion sampling
* rejection sampling
* importance sampling
* Markov Chain Monte Carlo 
* Gibbs sampling
* Metropolis Hastings
* Slice Sampling
* Annealing
* Parallel Tempering, Tempered Transitions, Simulated Tempering
* Nested Sampling (?)
* Hamiltonian Monte Carlo