Python Tutorial: Plot all of your data: ECDFs
Key Takeaways
Uses Python to plot all data with ECDFs
Original Description
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We saw in the last video the clarity of bee swarm plots.
However, there is a limit to their efficacy. For example, imagine we wanted to plot the county-level voting data for all states
east of the Mississippi River and all states west. We make the swarm plot as before, but using a DataFrame that contains all states, with each classified as being east or west of the Mississippi.
The bee swarm plot has a real problem. The edges have overlapping data points, which was necessary in order to fit all points onto the plot. We are now obfuscating data. So, using a bee swarm plot here is not the best option.
As an alternative,
we can compute an empirical cumulative distribution function, or ECDF. Again, this is best explained by example. Here is a picture of an ECDF of the percentage of swing state votes that went to Obama. A x-value of an ECDF is the quantity you are measuring, in this case the percent of vote that sent to Obama. The y-value is the fraction of data points that have a value smaller than the corresponding x-value.
For example, 20% of counties in swing states had 36% or less of its people vote for Obama.
Similarly, 75% of counties in swing states had 50% or less of its people vote for Obama.
Let's look at how to make one of these from our data. The x-axis is the sorted data. We need to generate it using the NumPy function sort, so we need to import Numpy, which we do using the alias np as is commonly done. The we can use np dot sort to generate our x-data. The y-axis is evenly spaced data points with a maximum of one, which we can generate using the np dot arange function and then dividing by the total number of data points. Once we specify the x and y values, we plot the points.
By default, plt-dot-plot plots lines connec
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