Power-law distributions occur in many situations of scientific interest and have significant consequences for our understanding of natural and man-made phenomena. Unfortunately, the empirical detection and characterization of power laws is made difficult by the large fluctuations that occur in the tail of the distribution. In particular, standard methods such as least-squares fitting are known to produce systematically biased estimates of parameters for power-law distributions and should not be used in most circumstances. Here we describe statistical techniques for making accurate parameter estimates for power-law data, based on maximum likelihood methods and the Kolmogorov-Smirnov statistic. We also show how to tell whether the data follow...
In recent years, researchers have realized the difficulties of fitting power-law distributions prope...
Abstract The prevailing maximum likelihood estimators for inferring power law models from rank-frequ...
Power law distributions, also known as heavy tail distributions, model distinct real life phenomena...
Many empirical datasets have highly skewed, non-Gaussian, heavy-tailed distributions, dominated by a...
Many empirical datasets have highly skewed, non-Gaussian, heavy-tailed distributions, domi...
Most standard methods based on maximum likelihood (ML) estimates of power-law exponents can only be ...
Most standard methods based on maximum likelihood (ML) estimates of power-law exponents can only be ...
This short communication uses a simple experiment to show that fitting to a power law distribution b...
Recently, Clauset, Shalizi, and Newman have proposed a systematic method to find over which range (i...
We bring rigor to the vibrant activity of detecting power laws in empirical degree distributions in ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/138264/1/sign1050.pd
This thesis includes a series studies on power-law distribution, which is a widely used distribution...
© Published under licence by IOP Publishing Ltd. This paper describes methods of the power law verif...
In this report I present the state-of-art techniques of fitting power-law distribution to empirical ...
<p>For each degree distribution we give a p-value for the fit to the power-law model and likelihood ...
In recent years, researchers have realized the difficulties of fitting power-law distributions prope...
Abstract The prevailing maximum likelihood estimators for inferring power law models from rank-frequ...
Power law distributions, also known as heavy tail distributions, model distinct real life phenomena...
Many empirical datasets have highly skewed, non-Gaussian, heavy-tailed distributions, dominated by a...
Many empirical datasets have highly skewed, non-Gaussian, heavy-tailed distributions, domi...
Most standard methods based on maximum likelihood (ML) estimates of power-law exponents can only be ...
Most standard methods based on maximum likelihood (ML) estimates of power-law exponents can only be ...
This short communication uses a simple experiment to show that fitting to a power law distribution b...
Recently, Clauset, Shalizi, and Newman have proposed a systematic method to find over which range (i...
We bring rigor to the vibrant activity of detecting power laws in empirical degree distributions in ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/138264/1/sign1050.pd
This thesis includes a series studies on power-law distribution, which is a widely used distribution...
© Published under licence by IOP Publishing Ltd. This paper describes methods of the power law verif...
In this report I present the state-of-art techniques of fitting power-law distribution to empirical ...
<p>For each degree distribution we give a p-value for the fit to the power-law model and likelihood ...
In recent years, researchers have realized the difficulties of fitting power-law distributions prope...
Abstract The prevailing maximum likelihood estimators for inferring power law models from rank-frequ...
Power law distributions, also known as heavy tail distributions, model distinct real life phenomena...