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Mean field variational Gaussian process algorithm. This repository contains a python3 implementation of the variational mean field algorithm as described in the paper: Physical Review E. vol. 91, 2015, 012148.

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MeanFieldVarGP

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Mean field variational Gaussian process algorithm

This repository contains a python3 implementation of the variational mean field algorithm as described in the paper:

M. D. Vrettas, M. Opper and D. Cornford (2015). "Variational mean-field algorithm for efficient inference in large systems of stochastic differential equations", Physical Review E. vol. 91, 2015, 012148.

ATTENTION: Equation (27) in the paper has a typo. There is an extra square in the denominator at the s(t). This was only in the paper as the code was done correctly. You can see this in the two examples below, on how to compute the energy terms. Also, a proof of the corrected equation can be found here Note: 1 and here Note: 2.

Expectations and gradients

In order to use the algorithm on a new system, one has to derive first a few expression that are system dependent (as described in the paper). Namely, the integral of Esde(t) in [t0, tf] and its derivatives:

  1. dEsde(t)/dm: with respect to the mean points
  2. dEsde(t)/ds: with respect to the variance points

These expressions can be computed in paper and then put into code. But here we provide an automated solution based on SymPy. We show how one can derive these expression and directly put them in code and use them. This is shown in two examples:

  1. How to compute energies.
  2. How to compute integrals.

Note: Even though the integrals can be computed in analytic form (at least for polynomial drift functions), one must be aware that the resulting expressions are "enormous" in size, resulting in very large files that are prone to numerical errors. In addition, SymPy at least on my ten years old laptop, was not able to compute all the integrals.

Therefore, I choose to estimate only the energy terms along with its gradients, and then use numerical integration to get the integral values. To improve performance I have parallelized these numerical integrations, so according to the system resources that one has the parallel pool can be tuned to include more CPUs (setting the option 'n_jobs=' inside the method free_energy.E_sde()).

Required packages

The recommended version is Python3.8. To simplify the installation of the required packages use:

$ pip install -r requirements.txt

Hint: The usage of a virtual environment is highly recommended.

Examples

We provide five examples on how to use this method:

  1. Double-Well (1D). The first one is a one-dimensional DW system. Even though the mean-field algorithm is meant to be applied on high dimensional system, this 1D example here helps with debugging the algorithm at the early stages of development. For these low dimensional systems the original (full) VGPA algorithm is preferred because it provides a one-dimensional version that makes everything much faster.

  2. Ornstein-Uhlenbeck (1D). Another one-dimensional system that is well known and studied.

  3. Lorenz '63 (3D). The third system considered is the chaotic Lorenz 1963 model (the butterfly model). Again, even though this is not very high dimensional it helps with ensuring that the code will perform as expected on more than 1D systems, in terms of matrix multiplications.

  4. Lorenz '96 (40D) The fourth system provided here is a stochastic version of the famous Lorenz 1996 model (minimal weather like model). The original paper describes a system with forty dimensions (D=40). But the cool thing is that since the system equations are in a circular framework the system can actually be extended to any number of dimensions (see the last example below).

  5. Lorenz '96 (500D) The last system we used is the Lorenz '96 model but with D=500. In this example we set the observations to 25% of the true systems dimension (i.e. d=125). This system is very difficult to perform inference, since not only we have sparse observations in time, but we also have partially observed state vectors.

Unittests

The included tests can be checked by running the following command from the '/src' directory:

$ python3 -m unittest discover -v

NOTE: To run this command successfully all the required packages must have been installed properly.

Contact

For any questions / comments please contact me at: [email protected]

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Mean field variational Gaussian process algorithm. This repository contains a python3 implementation of the variational mean field algorithm as described in the paper: Physical Review E. vol. 91, 2015, 012148.

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