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?


enter image description here


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.

    X:a design matrix where each column is a feature and each row is an observation.
    name: the name of the plot.
    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.

See http://pandas.pydata.org/pandas-docs/stable/visualization.html#density-plot.

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

axs = scatter_matrix(df, alpha=0.2, diagonal='hist')
  • 1
    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


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