Compute correlation coefficients with uncertainties
Project description
pymccorrelation
A tool to calculate correlation coefficients for data, using bootstrapping and/or perturbation to estimate the uncertainties on the correlation coefficient.
This was initially a python implementation of the Curran (2014) method for calculating uncertainties on Spearman's Rank Correlation Coefficient, but has since been expanded.
Curran's original C implementation is MCSpearman
(ASCL entry).
Currently the following correlation coefficients can be calculated (with bootstrapping and/or perturbation):
Kendall's tau can also calculated when some of the data are left/right censored, following the method described by Isobe+1986.
Requirements
- python3
- scipy
- numpy
Installation
pymccorrelation
is available via PyPi and can be installed with:
pip install pymccorrelation
Usage
pymccorrelation
exports a single function to the user (also called pymccorrelation
).
from pymccorrelation import pymccorrelation
[... load your data ...]
The correlation coefficient can be one of pearsonr
, spearmanr
, or kendallt
.
For example, to compute the Pearson's r for a sample, using 1000 bootstrapping iterations to estimate the uncertainties:
res = pymccorrelation(data['x'], data['y'],
coeff='pearsonr',
Nboot=1000)
The output, res
is a tuple of length 2, and the two elements are:
- numpy array with the correlation coefficient (Pearson's r, in this case) percentiles (by default 16%, 50%, and 84%)
- numpy array with the p-value percentiles (by default 16%, 50%, and 84%)
The percentile ranges can be adjusted using the percentiles
keyword argument.
Additionally, if the full posterior distribution is desired, that can be obtained by setting the return_dist
keyword argument to True
.
In that case, res
becomes a tuple of length four:
- numpy array with the correlation coefficient (Pearson's r, in this case) percentiles (by default 16%, 50%, and 84%)
- numpy array with the p-value percentiles (by default 16%, 50%, and 84%)
- numpy array with full set of correlation coefficient values from the bootstrapping
- numpy array with the full set of p-values computed from the bootstrapping
Please see the docstring for the full set of arguments and information including measurement uncertainties (necessary for point perturbation) and for marking censored data.
Citing
If you use this script as part of your research, I encourage you to cite the following papers:
- Curran 2014: Describes the technique and application to Spearman's rank correlation coefficient
- Privon+ 2020: First use of this software, as
pymcspearman
.
Please also cite scipy and numpy.
If your work uses Kendall's tau with censored data please also cite:
- Isobe+ 1986: Censoring of data when computing Kendall's rank correlation coefficient.
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