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I have two lists with integer values and I want to plot two histograms of them side by side using seaborn in python:

fig, [ax1, ax2] = plt.subplots(nrows=1, ncols=2, figsize=(16,6))

sns.set(style="whitegrid")
sns.distplot(list1, bins=30, rug=True, kde=False, ax=ax1)
sns.distplot(list2, bins=30, rug=True, kde=False, ax=ax2)
ax1.set_yscale('log')
ax2.set_yscale('log')
plt.show()

This is the plot: enter image description here

Clearly the right plot has useless information because the bars' height is an integer. Therefore, I have no interest at all in seeing the log scale for numbers between 0 and 1, i.e. I want to get rid of the 10^{-power}. How can I force the right plot's labels to be 0, 1, 10, 100 and 1000 in powers of ten notation? Just like the left plot. Thanks.

  • Mhh, the left and right plot have the same notation applied to them. I'm not sure if I hence understand what you want. – ImportanceOfBeingErnest Apr 14 at 2:50
  • @ImportanceOfBeingErnest they have the same notation. However, this is an histogram, and each bar thus has an integer height. Therefore, it is useless to consider 10^-n – Vladimir Vargas Apr 14 at 2:56
  • You are plotting a distribution. That can sure have values much below 1. – ImportanceOfBeingErnest Apr 14 at 3:25
  • > How can I force the right plot's labels to be 0, 1, 10, 100 and 1000 in powers of ten notation? Both are in log scale, or are you referring to the same range? Also x or y-axis? – cvanelteren Apr 14 at 7:52
  • @GlobalTraveler not the same range, because the data from the right plot goes up to 10^4 while the left plot goes up to 10^3. Both are in log scale, but on the right there is a useless division of the logscale because no information lies between 0 and 1. i.e. its like I had a bar with height 10^2 and another one with height 9^2, and I have a plot with a scale with 10^-12. That is useless. – Vladimir Vargas Apr 14 at 20:57
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Even though the reasons as for why this works, I post an answer that solved the problem. The idea is to set a limit for the y scale:

ax.set_ylim([0.5, 1000])

which produces the correct behaviour of the plot.

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