6

I'm having trouble finding quantile functions for well-known probability distributions in Python, do they exist? In particular, is there an inverse normal distribution function? I couldn't find anything in either Numpy or Scipy.

4

Check the .ppf() method of any distribution class in scipy.stats. This is the equivalent of a quantile function (otherwise named as percent point function or inverse CDF)

An example with the exponential distribution from scipy.stats:

# analysis libs
import scipy
import numpy as np
# plotting libs
import matplotlib as mpl
import matplotlib.pyplot as plt

# Example with the exponential distribution
c = 0
lamb = 2

# Create a frozen exponential distribution instance with specified parameters
exp_obj = scipy.stats.expon(c,1/float(lamb))

x_in = np.linspace(0,1,200) # 200 numbers in [0,1], input for ppf()
y_out = exp_obj.ppf(x_in)
plt.plot(x_in,y_out) # graphically check the results of the inverse CDF
0

It seems new but I've found this about numpy and quantile. Maybe you can have a look (not tested)

  • 2
    That gives the empirical quantiles of a set of observations, rather than the exact quantiles of a theoretical distribution the poster is asking for. It is new to numpy, but gives the same functionality as the function np.percentile. – user2699 Aug 10 '18 at 13:13

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.