1

I am confused about custom distributions, basically because I am not able to wrap my head around how it works. Perhaps a post on it would be super useful.

I am trying to create a distribution that is a combination of

-15% to -5% with 25% probability

0 to 5% with 75 % probability

Essentially trying to solve the problem given in Crystal Ball Tutorial.pdf page 3-11.

Can you please help me how to go about doing it.

2 Answers 2

1

What about doing something like this:

with pm.Model() as model:
    idx = pm.Uniform('idx', 0, 1)
    a = pm.Uniform('a', np.array([-15, 0]), np.array([-5, 5]), shape=2)
    b = pm.Deterministic('b', pm.math.switch(idx < 0.25, a[0], a[1]))
    step = pm.Metropolis()
    trace = pm.sample(1000, step)
1

You can do this with pymc3's Mixture distribution as follows:

import numpy as np
import pymc3 as pm

with pm.Model() as model:
    dist = pm.Mixture('dist', np.array([0.25, 0.75]),
                      [pm.Uniform.dist(-0.15, -0.05), pm.Uniform.dist(0., 0.05)])

N = 10000
samples = dist.random(size=10000)

Which produces the following distribution, which I think is what you are looking for

distribution histogram

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.