I've run into a fairly serious issue with matplotlib and Python. I have a dense periodogram data set and want to plot it. The issue is that when there are more data points than can be plotted on a pixel, the package does not pick the min and max to display. This means a casual look at the plot can lead you to incorrect conclusions.
Here's an example of such a problem:
The dataset was plotted with
scatter() overlayed. You can see that in the dense data fields, the blue line that connects the data does not reach the actual peaks, leading a human viewer to conclude the peak at ~2.4 is the maximum, when it's really not.
If you zoom-in or force a wide viewing window, it is displayed correctly.
aa keywords have no effect on the issue.
Is there a way to ensure that the min/max points of a
plot() call are always rendered? Otherwise, this needs to be addressed in an update to matplotlib. I've never had a plotting package behave like this, and this is a pretty major issue.
x = numpy.linspace(0,1,2000000) y = numpy.random.random(x.shape) y=2 plot(x,y) show()
Should replicate the problem. Though it may depend on your monitor resolution. By dragging and resizing the window, you should see the problem. One data point should stick out a y=2, but that doesn't always display.