How to best utilize the hist() to show a cumulative and normed histogram?

I have a problem while dealing with a data set which the value range from 0 to tens of thousand. And there is no problem to show the histogram of the whole data set using hist(). However, if I only want to show the cumulative and normed detailed histogram using say x = [0, 120], I have to use 600000 bins to assure the detail.

The tricky problem is if I just use the range of (0 ,120) to show normed and cumulative hist, it will end with 1. But actually it is far less than the real '1' since it just normed within this small range of data. Could anyone have some ideas how to utilize the hist() in matplotlib to tackle this problem? I thought this should not be so complicated that I have to write another function to draw the hist I need. Thanks a lot!!

-

You can set `bins` to a list, not an integer, e.g., `bins=[1,2,3,..,120,30000,60000]`.

To answer your commnet below, here is an excerpt from the documentation:

bins:

Either an integer number of bins or a sequence giving the bins. If bins is an integer, bins + 1 bin edges will be returned, consistent with numpy.histogram() for numpy version >= 1.3, and with the new = True argument in earlier versions. Unequally spaced bins are supported if bins is a sequence.

And here is an example with cumulative normalized histogram. Notice the effect of `bins = [100,125,150,160,170,180,190,200,210,220,230,240,250,275,300]` on this bar plot, how the first two bars are wider than the middle bars.

-
Could you please explain a little bit more? I am not very clear what it is used for. Thanks. –  AnneS Nov 1 '11 at 14:39
Thank you so much!! It works!.... –  AnneS Nov 1 '11 at 19:15

Hmmm, I guess this is related to your previous question (Memory error when dealing with huge data). My suggestion there doesn't seem to work for a cumulative histogram.

I can't get plt.hist() to play nice with cyborg's suggestion, so I did the cumsum and normalisation by hand:

``````from __future__ import division
import numpy as np
import matplotlib.pyplot as plt

from numpy.random import normal

inp = np.abs(normal(0, 100000, 100000))

bins = range(0, 120)
a,b = np.histogram(inp, bins = bins)
bar_edges = b[:-1]
bar_width = b[1] - b[0]
bar_height = (np.cumsum(a) + sum(inp<min(bins))) / len(inp)
plt.figure(1)
plt.bar(bar_edges, bar_height, width = bar_width)
plt.show()
``````
-
Thank you for teaching me np.histogram... –  AnneS Nov 1 '11 at 19:14