Creating Discontinuous Axes in Matplotlib
Introduction:
When creating plots using Matplotlib, a continuous x-axis is typically used. However, there may be instances where a discontinuous axis is desired, where a gap or jump occurs in the x-axis values. This can be useful for displaying data with missing or sparsely distributed values.
Using Subplots:
One approach to creating a discontinuous axis is to use subplots. Each subplot can be assigned a different range of x-axis values, resulting in a gap between the subplots. Here's a simple example:
import matplotlib.pyplot as plt x1 = np.linspace(0, 5, 100) y1 = np.sin(x1) x2 = np.linspace(10, 15, 100) y2 = np.cos(x2) plt.subplot(1, 2, 1) plt.plot(x1, y1) plt.subplot(1, 2, 2) plt.plot(x2, y2) plt.show()
Custom Axis Transformation:
Another method for creating a discontinuous axis is to use a custom axis transformation. By defining a new transformation class, we can specify how the data is mapped to the axis. The following code demonstrates this approach:
import matplotlib.pyplot as plt from matplotlib.transforms import Transform from matplotlib.ticker import LogLocator class DiscontinuousTransform(Transform): def __init__(self, breaks): Transform.__init__(self) self.breaks = breaks def transform(self, values): new_values = values.copy() for break in self.breaks: new_values[values > break] += 1 return new_values def inverted(self): return InvertedDiscontinuousTransform(self.breaks) class InvertedDiscontinuousTransform(Transform): def __init__(self, breaks): Transform.__init__(self) self.breaks = breaks def transform(self, values): new_values = values.copy() for break in self.breaks: new_values[values >= break] -= 1 return new_values def inverted(self): return DiscontinuousTransform(self.breaks) x = np.linspace(0, 10, 100) y = np.sin(x) trans = DiscontinuousTransform([5]) locator = LogLocator(base=10) locator.set_params(minor_locator=None) plt.plot(x, y, transform=trans) plt.gca().xaxis.set_major_locator(locator) plt.gca().xaxis.set_major_formatter(plt.FormatStrFormatter("%0.0f\n(pert)")) plt.show()
Conclusion:
Creating a discontinuous axis in Matplotlib can be achieved using subplots or custom axis transformations. The custom transformation approach provides more flexibility and control over the axis behavior. Both methods can be effective for visualizing data with gaps or discontinuities.
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