Powerlaw: a Python package for analysis of heavy-tailed distributions. Alstott, J., Bullmore, E., & Plenz, D. *PLoS ONE*, 9(1):e85777, January, 2014. arXiv: 1305.0215Paper doi abstract bibtex Power laws are theoretically interesting probability distributions that are also frequently used to describe empirical data. In recent years effective statistical methods for fitting power laws have been developed, but appropriate use of these techniques requires significant programming and statistical insight. In order to greatly decrease the barriers to using good statistical methods for fitting power law distributions, we developed the powerlaw Python package. This software package provides easy commands for basic fitting and statistical analysis of distributions. Notably, it also seeks to support a variety of user needs by being exhaustive in the options available to the user. The source code is publicly available and easily extensible.

@article{alstott_powerlaw:_2014,
title = {Powerlaw: a {Python} package for analysis of heavy-tailed distributions},
volume = {9},
issn = {1932-6203},
shorttitle = {Powerlaw},
url = {http://arxiv.org/abs/1305.0215},
doi = {10.1371/journal.pone.0085777},
abstract = {Power laws are theoretically interesting probability distributions that are also frequently used to describe empirical data. In recent years effective statistical methods for fitting power laws have been developed, but appropriate use of these techniques requires significant programming and statistical insight. In order to greatly decrease the barriers to using good statistical methods for fitting power law distributions, we developed the powerlaw Python package. This software package provides easy commands for basic fitting and statistical analysis of distributions. Notably, it also seeks to support a variety of user needs by being exhaustive in the options available to the user. The source code is publicly available and easily extensible.},
number = {1},
urldate = {2017-05-25},
journal = {PLoS ONE},
author = {Alstott, Jeff and Bullmore, Ed and Plenz, Dietmar},
month = jan,
year = {2014},
note = {arXiv: 1305.0215},
pages = {e85777},
}

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