# Understanding the diagonal in Pandas' scatter matrix plot

I'm plotting a scatter plot with `Pandas`. I can understand the plot, except the curves in diagonal plots. Can someone explain to me what they mean?

Image: Code:

``````import pylab
import numpy as np
from pandas.tools.plotting import scatter_matrix
import pandas as pd

def make_scatter_plot(X, name):
"""
Make scatterplot.

Parameters:
-----------
X:a design matrix where each column is a feature and each row is an observation.
name: the name of the plot.
"""
pylab.clf()
df = pd.DataFrame(X)
axs = scatter_matrix(df, alpha=0.2, diagonal='kde')

for ax in axs[:,0]: # the left boundary
ax.grid('off', axis='both')
ax.set_yticks([0, .5])

for ax in axs[-1,:]: # the lower boundary
ax.grid('off', axis='both')
ax.set_xticks([0, .5])

pylab.savefig(name + ".png")
``````

As you can tell, the scatter matrix is plotting each of the columns specified against each other column.

However, in this format, when you got to a diagonal, you would see a plot of a column against itself. Since this would always be a straight line, Pandas decides it can give you more useful information, and plots the density plot of just that column of data.

If you would rather have a histogram, you could change your plotting code to:

``````axs = scatter_matrix(df, alpha=0.2, diagonal='hist')
``````
• thanks! what other options except 'kde' or 'hist' are there? – Qwerty Dec 11 '17 at 15:28

Plotting methods allow for a handful of plot styles other than the default Line plot. These methods can be provided as the kind keyword argument to plot(). These include:

• ‘bar’ or ‘barh’ for bar plots
• ‘hist’ for histogram
• ‘box’ for boxplot
• ‘kde’ or 'density' for density plots
• ‘area’ for area plots
• ‘scatter’ for scatter plots
• ‘hexbin’ for hexagonal bin plots
• ‘pie’ for pie plots

https://pandas.pydata.org/pandas-docs/stable/visualization.html