Resample Save

Randomization-based inference in Python

Project README

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Link to full documentation_

.. _Link to full documentation: http://resample.readthedocs.io

.. skip-marker-do-not-remove

Resampling-based inference in Python based on data resampling and permutation.

This package was created by Daniel Saxton and is now maintained by Hans Dembinski.

Features

  • Bootstrap resampling: ordinary or balanced with optional stratification
  • Extended bootstrap resampling: also varies sample size
  • Parametric resampling: Gaussian, Poisson, gamma, etc.)
  • Jackknife estimates of bias and variance of any estimator
  • Compute bootstrap confidence intervals (percentile or BCa) for any estimator
  • Permutation-based variants of traditional statistical tests (USP test of independence and others)
  • Tools for working with empirical distributions (CDF, quantile, etc.)
  • Depends only on numpy_ and scipy_

Example

We bootstrap the uncertainty of the arithmetic mean, an estimator for the expectation. In this case, we know the formula to compute this uncertainty and can compare it to the bootstrap result. More complex examples can be found in the documentation <https://resample.readthedocs.io/en/stable/tutorials.html>_.

.. code-block:: python

  from resample.bootstrap import variance
  import numpy as np

  # data
  d = [1, 2, 6, 3, 5]

  # this call is all you need
  stdev_of_mean = variance(np.mean, d) ** 0.5
  
  print(f"bootstrap {stdev_of_mean:.2f}")
  print(f"exact {np.std(d) / len(d) ** 0.5:.2f}")
  # bootstrap 0.82
  # exact 0.83

The amazing thing is that the bootstrap works as well for arbitrarily complex estimators. The bootstrap often provides good results even when the sample size is small.

.. _numpy: http://www.numpy.org .. _scipy: https://www.scipy.org

Installation

You can install with pip.

.. code-block:: shell

  pip install resample
Open Source Agenda is not affiliated with "Resample" Project. README Source: scikit-hep/resample

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