20

Is there a way to set the color bar scale to log on a seaborn heat map graph?
I am using a pivot table output from pandas as an input to the call

 sns.heatmap(df_pivot_mirror,annot=False,xticklabels=256,yticklabels=128,cmap=plt.cm.YlOrRd_r)

Thank you.

16

Yes, but seaborn has hard-coded a linear tick locator for the colorbar, so the result might not be quite what you want:

# http://matplotlib.org/examples/pylab_examples/pcolor_log.html
# modified to use seaborn

import matplotlib.pyplot as plt
from matplotlib.colors import LogNorm
import numpy as np
from matplotlib.mlab import bivariate_normal
import seaborn as sns; sns.set()


N = 20
X, Y = np.mgrid[-3:3:complex(0, N), -2:2:complex(0, N)]

# A low hump with a spike coming out of the top right.
# Needs to have z/colour axis on a log scale so we see both hump and spike.
# linear scale only shows the spike.
Z1 = bivariate_normal(X, Y, 0.1, 0.2, 1.0, 1.0) + 0.1 * bivariate_normal(X, Y, 1.0, 1.0, 0.0, 0.0)

fig, axs = plt.subplots(ncols=2)

sns.heatmap(Z1, ax = axs[0])
sns.heatmap(Z1, ax = axs[1],
            #cbar_kws={'ticks':[2,3]}, #Can't specify because seaborn does
            norm=LogNorm(vmin=Z1.min(), vmax=Z1.max()))


axs[0].set_title('Linear norm colorbar, seaborn')
axs[1].set_title('Log norm colorbar, seaborn')
plt.show()

See the pylab example this started with for a pylab version that automatically gets colorbar tick labels (though is otherwise not as pretty).

spiky data with linear and log colorbar

You can edit the seaborn code to make it work: if you alter the plot() function in /seaborn/matrix.py (ver 0.7.0):

    # Possibly add a colorbar
    if self.cbar:
        ticker = mpl.ticker.MaxNLocator(6)
        if 'norm' in kws.keys():
            if type(kws['norm']) is mpl.colors.LogNorm:
                ticker = mpl.ticker.LogLocator(numticks=8)

you get:

enter image description here

I'll suggest that on the seaborn github, but if you want it earlier, there it is.

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11

You can normalize the values on the colorbar with matplotlib.colors.LogNorm. I also had to manually set the labels in seaborn and ended up with the following code:

#!/usr/bin/env python3

import math

import numpy as np
import seaborn as sn
from matplotlib.colors import LogNorm

data = np.random.rand(20, 20)

log_norm = LogNorm(vmin=data.min().min(), vmax=data.max().max())
cbar_ticks = [math.pow(10, i) for i in range(math.floor(math.log10(data.min().min())), 1+math.ceil(math.log10(data.max().max())))]

sn.heatmap(
    data,
    norm=log_norm,
    cbar_kws={"ticks": cbar_ticks}
)

heatmap rand

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  • Is there a way to change the format of the tick values on the colorbar to be the actual numbers (as in 0.01 and 0.1 in your example) rather than expressed as powers (10^-2, 10^-1) etc. ? – Mead Feb 10 at 10:34
1

Responding to cphlewis (I don't have enough reputation), I solved this problem using cbar_kws; as I saw here: seaborn clustermap: set colorbar ticks.

For example cbar_kws={"ticks":[0,1,10,1e2,1e3,1e4,1e5]}.

from matplotlib.colors import LogNorm
s=np.random.rand(20,20)
sns.heatmap(s, norm=LogNorm(s.min(),s.max()),
            cbar_kws={"ticks":[0,1,10,1e2,1e3,1e4,1e5]},
            vmin = 0.001, vmax=10000)
plt.show()

Have a nice day.

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  • 1
    Where does LogNorm come from? Also, the heatmap for sns.heatmap does not show norm: what does it do? – selwyth Mar 27 '18 at 20:28
0

Short Answer:

from matplotlib.colors import LogNorm

sns.heatmap( df,  norm=LogNorm())
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