I'm trying to make a line plot with a smooth looking confidence interval. Something that looks like this:


Currently, what I've done is to use errorbars to show the confidence interval. So I have 100 (x,y) pairs and I pass it to sns.lineplot which creates a line for me, and then each of these points, I have standard deviation I want to plot Sigma_new_vec.

axs[(e-1)//2, (e-1)%2].errorbar(x, y ,yerr = Sigma_new_vec, linestyle="None")
sns.lineplot(x='x', y='y', data = predicted_line, ax= axs[(e-1)//2, (e-1)%])
sns.lineplot(x='x', y='y', data = true_line, ax = axs[(e-1)//2, (e-1)%2] )

So currently what I have looks something like this, where I have confidence intervals for each of the 100 points, but I would like it to be smoothened out. my example


With @ImportanceOfBeingErnest's suggestion, I got it to work!

lower_bound = [M_new - Sigma for M_new, Sigma in zip(M_new_vec, Sigma_new_vec)]
upper_bound = [M_new + Sigma for M_new, Sigma in zip(M_new_vec, Sigma_new_vec)]
plt.fill_between(x_axis, lower_bound, upper_bound, alpha=.3)

If numpy is available:

import numpy as np

M_new_vec = np.array(M_new_vec)
Sigma_new_vec = np.array(Sigma_new_vec)

lower_bound = M_new_vec - Sigma_new_vec
upper_bound = M_new_vec + Sigma_new_vec

plt.fill_between(x_axis, lower_bound, upper_bound, alpha=.3)

enter image description here

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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