# fitting a cumulative line to histogram with matplotlib

I created the histogram below:

and was wondering if instead of plotting the whole graph (in blue) I could just plot the top edge (in black)?

or just fit the line to match the top of the distribution?

my code is:

``````plt.hist(histogramData, bins=200, normed=True, cumulative=True, edgecolor='b', facecolor='None')
``````

I tried removing 'edgecolor' and 'facecolor' but it does not seem to work...

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Would also be interesting to be able to plot both together perhaps. Like this in d3.js. – David Feb 8 at 7:17

I think pylabs histogram codes uses numpys `np.histogram()` function, yielding bins and counts; so if you use that together wit the standard `plot()` command, you are done (just remember to also do the `np.cumsum()`on the counts of the `np.histogram()` for the cummulative look).

Edit: Regarding the comment, I quote from the `numpy.histogram()` documentation:

Returns:

hist : array

The values of the histogram. See normed and weights for a description of the possible semantics.

bin edges : array of dtype float

Return the bin edges (length(hist)+1).

Thus, to plot your data in the desired way:

``````hist, bins = np.histogram(data, bins=200)
plt.plot( bins[:-1], np.cumsum(hist) )
``````

or if you want to be more precise, you could even put the data values in the bin center:

``````offset = bins[1:]-bins[:-1]
plt.plot( bins[:-1]+offset, np.cumsum(hist) )
``````
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thanks. i tried it and it looks like the number of bins and counts is different (200 and 201) and I cant plot the data... – kate88 Oct 14 '13 at 15:03