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MCHMC: sampler from an arbitrary differentiable distribution

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samueldmcdermott/MicroCanonicalHMC

 
 

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MicroCanonical Hamiltonian Monte Carlo (MCHMC)

Installation

pip install mclmc

Overview

poster

You can check out the tutorials:

  • getting started: sampling from a standard Gaussian (sequential sampling)
  • advanced tutorial: sampling the hierarchical Stochastic Volatility model for the S&P500 returns data (sequential sampling)

Julia implementation is available here.

The associated papers are:

If you have any questions do not hesitate to contact me at [email protected]

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