Categorical data can we visualized using two plots, you can either use the functions pointplot(), or the higher-level function factorplot().
Factorplot draws a categorical plot on a FacetGrid. Using ‘kind’ parameter we can choose the plot like boxplot, violinplot, barplot and stripplot. FacetGrid uses pointplot by default.
import pandas as pd import seaborn as sb from matplotlib import pyplot as plt df = sb.load_dataset('exercise') sb.factorplot(x = "time", y = pulse", hue = "kind",data = df); plt.show()
We can use different plot to visualize the same data using the kind parameter.
import pandas as pd import seaborn as sb from matplotlib import pyplot as plt df = sb.load_dataset('exercise') sb.factorplot(x = "time", y = "pulse", hue = "kind", kind = 'violin',data = df); plt.show()
In factorplot, the data is plotted on a facet grid.
Facet grid forms a matrix of panels defined by row and column by dividing the variables. Due of panels, a single plot looks like multiple plots. It is very helpful to analyze all combinations in two discrete variables.
Let us visualize the above the definition with an example
import pandas as pd import seaborn as sb from matplotlib import pyplot as plt df = sb.load_dataset('exercise') sb.factorplot(x = "time", y = "pulse", hue = "kind", kind = 'violin', col = "diet", data = df); plt.show()
The advantage of using Facet is, we can input another variable into the plot. The above plot is divided into two plots based on a third variable called ‘diet’ using the ‘col’ parameter.
We can make many column facets and align them with the rows of the grid −
import pandas as pd import seaborn as sb from matplotlib import pyplot as plt df = sb.load_dataset('titanic') sb.factorplot("alive", col = "deck", col_wrap = 3,data = df[df.deck.notnull()],kind = "count") plt.show()