Issue
I'd like to plot a factorplot in seaborn, but manually provide the error bars instead of having seaborn calculate them.
I have a pandas dataframe that looks roughly like this:
model output feature mean std
0 first two a 9.00 2.00
1 first one b 0.00 0.00
2 first one c 0.00 0.00
3 first two d 0.60 0.05
...
77 third four a 0.30 0.02
78 third four b 0.30 0.02
79 third four c 0.10 0.01
and I'm outputting a plot that looks like:
I'm using this seaborn commands to generate the plot:
g = sns.factorplot(data=pltdf, x='feature', y='mean', kind='bar',
col='output', col_wrap=2, sharey=False, hue='model')
g.set_xticklabels(rotation=90)
However, I can't figure out how to have seaborn use the 'std' column as the error bars. Unfortunately, it would be quite time consuming to recompute the output for the data frame in question.
This is a little similar to this q: Plotting errors bars from dataframe using Seaborn FacetGrid
Except I can't figure out how to get it to work with the matplotlib.pyplot.bar
function.
Is there a way to do this using seaborn factorplot
or FacetGrid
combined with matplotlib?
Solution
Tested in python 3.8.12
, pandas 1.3.4
, matplotlib 3.4.3
, seaborn 0.11.2
You could do something like
import seaborn as sns
import matplotlib.pyplot as plt
tips = sns.load_dataset("tips")
tip_sumstats = (tips.groupby(["day", "sex", "smoker"])
.total_bill
.agg(["mean", 'sem'])
.reset_index())
def errplot(x, y, yerr, **kwargs):
ax = plt.gca()
data = kwargs.pop("data")
data.plot(x=x, y=y, yerr=yerr, kind="bar", ax=ax, **kwargs)
g = sns.FacetGrid(tip_sumstats, col="sex", row="smoker")
g.map_dataframe(errplot, "day", "mean", "sem")
Answered By - mwaskom
0 comments:
Post a Comment
Note: Only a member of this blog may post a comment.