I want to plot categorical plots with the Seaborn pointplot, but data points that are not adjacent are not connected with a line in the plot. I would like to interpolate between non adjacent points, and connect them in the same way as adjacent points are connected, how can I do this?

An example: In the left and middle images, the blue and green points should be connected with a curve, respectively, but now they are separated into small parts. How can I plot the left and middle images just like the right one?

enter image description here

fig, axs = plt.subplots(ncols=3, figsize=(10,5))
exp_methods = ['fMRI left', 'fMRI right', 'MEG']
for i in range(3):
    experiment = exp_methods[i]
    dataf = df[df['data']==experiment]    
    sns.pointplot(x='number_of_subjects', y='accuracy', hue='training_size', data=dataf,
               capsize=0.2, size=6, aspect=0.75, ci=95, legend=False, ax=axs[i])
  • I would suggest not to use seaborn then. Just use a usual scatter or line plot with errorbars in matplotlib. – ImportanceOfBeingErnest Oct 17 '17 at 21:12
up vote 0 down vote accepted

I don't think there is an option to interpolate where there are missing data points, and hence the line stops instead. This question on the same topic from 2016 remains unanswered.

Instead, you could use plt.errorbar as suggested in the comments, or add the lines afterwards using plt.plot while still using seaborn to plot the means and error bars:

import seaborn as sns

tips = sns.load_dataset('tips')

# Create a gap in the data and plot it
tips.loc[(tips['size'] == 4) & (tips['sex'] == 'Male'), 'size'] = 5
sns.pointplot('size', 'total_bill', 'sex', tips, dodge=True)

enter image description here

# Fill gap with manual line plot
ax = sns.pointplot('size', 'total_bill', 'sex', tips, dodge=True, join=False)

# Loop over the collections of point in the axes and the grouped data frame
for points, (gender_name, gender_slice) in zip(ax.collections, tips.groupby('sex')):
    # Retrieve the x axis positions for the points
    x_coords = [coord[0] for coord in points.get_offsets()]
    # Manually calculate the mean y-values to use with the line
    means = gender_slice.groupby(['size']).mean()['total_bill']
    ax.plot(x_coords, means, lw=2)

enter image description here

  • Thank you so much. I have another question, on the left and middle images, the gap between two adjacent values on the x-axis should be different, but now they are same, how can I change that? – emma qqq Oct 20 '17 at 18:25
  • @emmaqqq No worries, please accept this answer (click the checkmark) if it solved your problem. Then I can close the question I linked to as a duplicate of this. For your comment, please open a new question and feel free to link it here. – Joel Ostblom Oct 20 '17 at 18:43
  • @emmaqqq I forgot to say: For your new question, try to include a sample data set, so that it easy for others to reproduce your problem and help you. A good resource are the Seaborn sample data sets, feel free to reuse code from my answer here. – Joel Ostblom Oct 20 '17 at 18:53

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.