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I'm sure this is easy, but I've been tearing my hair out trying to find out how to do this in R.

I have some data that I am trying to fit to a power law distribution. To do this, you need to plot the data on a log-log cumulative probability chart. The y-axis is the LOG of the frequency of the data (or log-probability, if you like), and the x-axis is the log of the values. If it's a straight line, then it fits a power law distribution, and the gradient determines the power law parameter.

If I want the frequency of the data, I can just use the ecdf() function:

My data set is called Profits.negative, and it's just a long list of trading profits that were less than zero (and I've notionally converted them all to positive numbers to avoid logging problems later on).

So I can type

plot(ecdf(Profits.negative))

And I get a handy empirical CDF function plotted. All I need to do is to convert both axes to log scales. I can do the x-axis:

Profits.negative.logs <- log(Profits.negative)
plot(ecdf(Profits.negative.logs))

Almost there! I just need to work out how to log the y-axis! But I can't seem to do it, and I can't work out how to extract the figures from the ecdf object. Can anyone help?

I know there is a power.law.fit function, but that just estimates the parameters - I want to plot the data and see if it lines up.

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You'll likely get more help by including the data you're working with. This post is helpful in that regard: stackoverflow.com/a/5963610/495372 –  Andy Barbour Feb 6 '13 at 18:34

2 Answers 2

You can fit and plot power-laws using the poweRlaw package. Here's an example. First we generate some data from a heavy tailed distribution:

set.seed(1)
x = round(rlnorm(100, 3, 2)+1)

Next we load the package and create a data object and a displ object:

library(poweRlaw)
m = displ$new(x)

We can estimate xmin and the scaling parameter:

est = estimate_xmin(m))

and set the parameters

m$setXmin(est[[2]])
m$setPars(est[[3]])

Then plot the data and add the fitted line:

plot(m)
lines(m, col=2)

To get:

enter image description here

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Data generation first (you part, actually ;)):

set.seed(1)
Profits.negative <- runif(1e3, 50, 100) + rnorm(1e2, 5, 5)

Logging and ecdf:

Profits.negative.logs <- log(Profits.negative)
fn <- ecdf(Profits.negative.logs)

ecdf returns function, and if you want to extract something from it - it's good idea to look into function's closure:

ls(environment(fn))
# [1] "f"      "method" "n"      "nobs"   "x"      "y"      "yleft"  "yright"

Well, now we can access x and y:

x <- environment(fn)$x
y <- environment(fn)$y

Probably it's what you need. Indeed, plot(fn) and plot(x,y,type="l") show virtually the same results. To log y-axis you need just:

plot(x,log(y),type="l")
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