Skip to content

Python code for bayesian optimization using Gaussian processes

Notifications You must be signed in to change notification settings

cassidys/bayesian-optimization

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

3 Commits
 
 
 
 
 
 

Repository files navigation

Bayesian optimization with Gaussian processes

This repository contains Python code for Bayesian optimization using Gaussian processes. It contains two directories:

  • python: Contains two python scripts gp.py and plotters.py, that contain the optimization code, and utility functions to plot iterations of the algorithm, respectively.
  • ipython-notebooks: Contains an IPython notebook that uses the Bayesian algorithm to tune the hyperparameters of a support vector machine on a dummy classification task.

The signature of the optimization function is:

bayesian_optimisation(n_iters, sample_loss, bounds, x0=None, n_pre_samples=5,
                      gp_params=None, random_search=False, alpha=1e-5, epsilon=1e-7)

and its docstring is:

bayesian_optimisation

  Uses Gaussian Processes to optimise the loss function `sample_loss`.

  Arguments:
  ----------
      n_iters: integer.
          Number of iterations to run the search algorithm.
      sample_loss: function.
          Function to be optimised.
      bounds: array-like, shape = [n_params, 2].
          Lower and upper bounds on the parameters of the function `sample_loss`.
      x0: array-like, shape = [n_pre_samples, n_params].
          Array of initial points to sample the loss function for. If None, randomly
          samples from the loss function.
      n_pre_samples: integer.
          If x0 is None, samples `n_pre_samples` initial points from the loss function.
      gp_params: dictionary.
          Dictionary of parameters to pass on to the underlying Gaussian Process.
      random_search: integer.
          Flag that indicates whether to perform random search or L-BFGS-B optimisation
          over the acquisition function.
      alpha: double.
          Variance of the error term of the GP.
      epsilon: double.
          Precision tolerance for floats.

About

Python code for bayesian optimization using Gaussian processes

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 98.7%
  • Python 1.3%