Dismiss
Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

# Plot line graph from histogram data in matplotlib

I have a numpy array of ints representing time periods, which I'm currently plotting in a histogram to get a nice distribution graph, using the following code:

``````ax.hist(data,bins=100,range=(minimum,maximum),facecolor="r")
``````

However I'm trying to modify this graph to represent the exact same data using a line instead of bars, so I can overlay more samples to the same plot and have them be clear (otherwise the bars overlap each other). What I've tried so far is to collate the data array into an array of tuples containing (time, count), and then plot it using

``````ax.plot(data[:,0],data[:,1],color="red",lw=2)
``````

However that's not giving me anything close, as I can't accurately simulate the bins option of the histogram in my plot. Is there a better way to do this?

-

You can save the output of `hist` and then plot it.

``````import numpy as np
import pylab as p

data=np.array(np.random.rand(1000))
y,binEdges=np.histogram(data,bins=100)
bincenters = 0.5*(binEdges[1:]+binEdges[:-1])
p.plot(bincenters,y,'-')
p.show()
``````
-
Perfect, exactly what I was looking for! thanks! – CNeo Jan 11 '12 at 16:26
Any way to get this as bars, not as a line? I'm calculating histograms for different people, then averaging, so I've got average counts and want to construct a histogram-looking bar chart from those. – Amyunimus Sep 19 '12 at 4:35
Sure. Use `p.bar(bincenters,y,align='center')`. Check stackoverflow.com/a/12182440/302369 for details. – imsc Sep 19 '12 at 12:21

I am very late to the party - but maybe this will be useful to someone else. I think what you need to do is set the histtype parameter to 'step', i.e.

``````ax.hist(data,bins=100,range=(minimum,maximum),facecolor="r", histtype = 'step')
``````
-
This is a great answer! – user3731622 Apr 1 at 21:30

Try `ax.plot(zip(*data)[:][0],zip(*data)[:][1],color="red",lw=2)`

-