25

I'm creating plots using Matplotlib that I save as SVG, export to .pdf + .pdf_tex using Inkscape, and include the .pdf_tex-file in a LaTeX document.

This means that I can input LaTeX-commands in titles, legends etc., giving an image like this plot

which renders like this when I use it in my LaTeX document. Notice that the font for the numbers on the axes change, and the LaTeX-code in the legend is compiled:

plot rendered using LaTeX

Code for the plot (how to export to SVG not shown here, but can be shown on request):

import numpy as np
x = np.linspace(0,1,100)
y = x**2

import matplotlib.pyplot as plt
plt.plot(x, y, label = '{\\footnotesize \$y = x^2\$}')
plt.legend(loc = 'best')
plt.show()

The problem is, as you can see, that the alignment and size of the box around the legend is wrong. This is because the size of the text of the label changes when the image is passed through Inkscape + pdflatex (because \footnotesize etc. disappears, and the font size changes).

I have figured out that I can choose the placement of the label by either

plt.label(loc = 'upper right')

or if I want more control I can use

plt.label(bbox_to_anchor = [0.5, 0.2])

but I haven't found any way of making the box around the label smaller. Is this possible?

An alternative to making the box smaller is to remove the outline of the box using something like

legend = plt.legend()
legend.get_frame().set_edgecolor('1.0')

and then moving the label to where I want it. In that case I would like to be able to set the placement of the label by first letting python/matplotlib place it using

plt.label(loc = 'upper right')

and then for example moving it a bit to the right. Is this possible? I have tried using get_bbox_to_anchor() and set_bbox_to_anchor(), but can't seem to get it to work.

1
  • I was looking for the loc keywords - upper left etc. and reached here.
    – ijuneja
    Commented Jun 30, 2021 at 10:17

3 Answers 3

28

You can move a legend after automatically placing it by drawing it, and then getting the bbox position. Here's an example:

import matplotlib.pyplot as plt
import numpy as np

# Plot data
x = np.linspace(0,1,100)
y = x**2
fig = plt.figure()
ax = fig.add_subplot(221) #small subplot to show how the legend has moved. 

# Create legend
plt.plot(x, y, label = '{\\footnotesize \$y = x^2\$}')
leg = plt.legend( loc = 'upper right')

plt.draw() # Draw the figure so you can find the positon of the legend. 

# Get the bounding box of the original legend
bb = leg.get_bbox_to_anchor().inverse_transformed(ax.transAxes)

# Change to location of the legend. 
xOffset = 1.5
bb.x0 += xOffset
bb.x1 += xOffset
leg.set_bbox_to_anchor(bb, transform = ax.transAxes)


# Update the plot
plt.show()

legend moved after first drawing

6
  • 1
    This looks great. I've never seen legendPatch before though, why isn't it mentioned in the docs?
    – Filip S.
    Commented Apr 24, 2014 at 9:33
  • I don't know. I learned this trick from the Matplotlib-users email list but I can't find the post. Hopefully some one else will chime in with a more complete answer!
    – Molly
    Commented Apr 24, 2014 at 15:40
  • this does not work with matplotlib version '1.5.1+1304.gc0728d2' matplotlib/transforms.py in get_points(self) 1101 # same. 1102 points = self._transform.transform( -> 1103 [[p[0, 0], p[0, 1]], 1104 [p[1, 0], p[0, 1]], 1105 [p[0, 0], p[1, 1]], TypeError: list indices must be integers, not tuple Commented Feb 22, 2016 at 19:39
  • 1
    @DimaLituiev I have modified the answer, now it works as intended on matplotlib 1.5.1.
    – Filip S.
    Commented Mar 27, 2017 at 13:03
  • Worked great for me. You can also shift the legend vertically with: bb.y0 += yOffset and bb.y1 += yOffset after setting the variable yOffset to your desired magnitude.
    – jesseaam
    Commented Feb 14, 2020 at 18:39
18

You may use the bbox_to_anchor and bbox_transform parameters to help you setting the anchor for your legend:

ax = plt.gca()
plt.legend(bbox_to_anchor=(1.1, 1.1), bbox_transform=ax.transAxes)

Note that (1.1, 1.1) are in the axes coordinates in this example. If you wish to use the data coordinates you have to use bbox_transform=ax.transData instead.

2
  • 1
    Thanks. This doesn't let me move the legends after placing it though. And btw, transAxes is actually default according to the doc.
    – Filip S.
    Commented Apr 24, 2014 at 9:29
  • @FilipSund, yes, the transAxes is the default... you can perhaps pass to bbox_to_achor a tuple with 4 floats (x, y, width, height), which should give you more control over the bbox behavior... Commented Apr 24, 2014 at 9:37
2

Updating Molly's answer so that it is compatible with Matplotlib 3.3+. The old answer was to move the legend via:

import matplotlib.pyplot as plt
import numpy as np

# Plot data
x = np.linspace(0,1,100)
y = x**2
fig = plt.figure()
ax = fig.add_subplot(221) #small subplot to show how the legend has moved. 

# Create legend
plt.plot(x, y, label = '{\\footnotesize \$y = x^2\$}')
leg = plt.legend( loc = 'upper right')

plt.draw() # Draw the figure so you can find the positon of the legend. 

# Get the bounding box of the original legend
bb = leg.get_bbox_to_anchor().inverse_transformed(ax.transAxes)

# Change to location of the legend. 
xOffset = 1.5
bb.x0 += xOffset
bb.x1 += xOffset
leg.set_bbox_to_anchor(bb, transform = ax.transAxes)


# Update the plot
plt.show()

However this does not work in Matplotlib 3.3+. You can fix this by changing bb = leg.get_bbox_to_anchor().inverse_transformed(ax.transAxes) to bb = leg.get_bbox_to_anchor().transformed(ax.transAxes.inverted())

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