Title of article
From data to probability densities without histograms Original Research Article
Author/Authors
Bernd A. Berg، نويسنده , , Robert C. Harris، نويسنده ,
Issue Information
دوهفته نامه با شماره پیاپی سال 2008
Pages
6
From page
443
To page
448
Abstract
When one deals with data drawn from continuous variables, a histogram is often inadequate to display their probability density. It deals inefficiently with statistical noise, and binsizes are free parameters. In contrast to that, the empirical cumulative distribution function (obtained after sorting the data) is parameter free. But it is a step function, so that its differentiation does not give a smooth probability density. Based on Fourier series expansion and Kolmogorov tests, we introduce a simple method, which overcomes this problem. Error bars on the estimated probability density are calculated using a jackknife method. We give several examples and provide computer code reproducing them. You may want to look at the corresponding figures 4 to 9 first.
Keywords
Continuous variables , Histograms , Cumulative distribution functions , Probability densities , Display of data
Journal title
Computer Physics Communications
Serial Year
2008
Journal title
Computer Physics Communications
Record number
1137514
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