I got a question that I fight around for days with now.

How do I calculate the (95%) confidence band of a fit?

Fitting curves to data is the every day job of every physicist -- so I think this should be implemented somewhere -- but I can't find an implementation for this neither do I know how to do this mathematically.

The only thing I found is seaborn that does a nice job for linear least-square.

import numpy as np                                                                                                                                                                                                                         
from matplotlib import pyplot as plt
import seaborn as sns
import pandas as pd

x = np.linspace(0,10)
y = 3*np.random.randn(50) + x

data = {'x':x, 'y':y}
frame = pd.DataFrame(data, columns=['x', 'y'])
sns.lmplot('x', 'y', frame, ci=95)



But this is just linear least-square. When I want to fit e.g. a saturation curve like saturation-eqn, I'm screwed.

Sure, I can calculate the t-distribution from the std-error of a least-square method like scipy.optimize.curve_fit but that is not what I'm searching for.

Thanks for any help!!


2 Answers 2


You can achieve this easily using StatsModels module.

Also see this example and this answer.

Here is an answer for your question:

import numpy as np
from matplotlib import pyplot as plt

import statsmodels.api as sm
from statsmodels.stats.outliers_influence import summary_table

x = np.linspace(0,10)
y = 3*np.random.randn(50) + x
X = sm.add_constant(x)
res = sm.OLS(y, X).fit()

st, data, ss2 = summary_table(res, alpha=0.05)
fittedvalues = data[:,2]
predict_mean_se  = data[:,3]
predict_mean_ci_low, predict_mean_ci_upp = data[:,4:6].T
predict_ci_low, predict_ci_upp = data[:,6:8].T

fig, ax = plt.subplots(figsize=(8,6))
ax.plot(x, y, 'o', label="data")
ax.plot(X, fittedvalues, 'r-', label='OLS')
ax.plot(X, predict_ci_low, 'b--')
ax.plot(X, predict_ci_upp, 'b--')
ax.plot(X, predict_mean_ci_low, 'g--')
ax.plot(X, predict_mean_ci_upp, 'g--')


  • Unfortunately, this is currently only available in statsmodels for linear functions, and will be available for generalized linear models in the next release, but not yet for general non-linear functions.
    – Josef
    Feb 24, 2015 at 13:44

kmpfit's confidence_band() calculates the confidence band for non-linear least squares. Here for your saturation curve:

from pylab import *
from kapteyn import kmpfit

def model(p, x):
  a, b = p
  return a*(1-np.exp(b*x))

x = np.linspace(0, 10, 100)
y = .1*np.random.randn(x.size) + model([1, -.4], x)

fit = kmpfit.simplefit(model, [.1, -.1], x, y)
a, b = fit.params
dfdp = [1-np.exp(b*x), -a*x*np.exp(b*x)]
yhat, upper, lower = fit.confidence_band(x, dfdp, 0.95, model)

scatter(x, y, marker='.', color='#0000ba')
for i, l in enumerate((upper, lower, yhat)):
  plot(x, l, c='g' if i == 2 else 'r', lw=2)
savefig('kmpfit confidence bands.png', bbox_inches='tight')

The dfdp are the partial derivatives ∂f/∂p of the model f = a*(1-e^(b*x)) with respect to each parameter p (i.e., a and b), see my answer to a similar question for background links. And here the output:

kmpfit confidence bands

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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