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Using Plot for Categorical Scatter Plots
In this guide, we aim to address a common issue when creating scatter plots in Python using Pandas and matplotlib. Specifically, we will explore how to assign specific symbols to different categories within the data.
The Problem
Given a Pandas DataFrame with multiple columns, the goal is to create a scatter plot where two variables are plotted along the x and y axes, while a third column determines the symbols used to represent the data points.
The Solution: Using Plot
While scatter can be used for this task, it requires numerical values for the categories, which limits its effectiveness. A better approach is to utilize the plot function for discrete categories.
The following code example demonstrates how to implement this approach:
import matplotlib.pyplot as plt import numpy as np import pandas as pd np.random.seed(1974) # Generate Data num = 20 x, y = np.random.random((2, num)) labels = np.random.choice(['a', 'b', 'c'], num) df = pd.DataFrame(dict(x=x, y=y, label=labels)) groups = df.groupby('label') # Plot fig, ax = plt.subplots() ax.margins(0.05) for name, group in groups: ax.plot(group.x, group.y, marker='o', linestyle='', ms=12, label=name) ax.legend() plt.show()
For a visually appealing result, you can customize the plot using the matplotlib style available in Pandas' plotting module:
plt.rcParams.update(pd.tools.plotting.mpl_stylesheet) colors = pd.tools.plotting._get_standard_colors(len(groups), color_type='random') # ... (the rest of the code remains the same)
This will give you a scatter plot where each category is represented by a distinct color and symbol.
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