Domanda

I am attempting to port the gaussian mixture model as defined in: How to model a mixture of 3 Normals in PyMC? over to pymc3

Code

import numpy as np
from pymc import Model, Gamma, Normal, Dirichlet
from pymc import Multinomial
from pymc import sample, Metropolis

k = 3
ndata = 500

v = np.random.randint(0, k, ndata)
data = ((v == 0)*(50 + np.random.randn(ndata))
        + (v == 1)*(-50 + np.random.randn(ndata))
        + (v == 2)*np.random.randn(ndata))

model = Model()

with model:
    dd = Dirichlet('dd', k=k, a=1, shape=k)
    precs = Gamma('precs', alpha=0.1, beta=0.1, shape=k)
    means = Normal('means', 0, 0.001, shape=k)
    category = Multinomial('category',
                           n=1,
                           p=dd,
                           shape=ndata)

    points = Normal('obs',
                    means[category],
                    precs[category],
                    observed=data)
    tr = sample(3000, step=Metropolis())

I'm getting the following code error:

AttributeError: <pymc.quickclass.Multinomial object at 0x4804210> has no default value to use, checked for: ['mode'] pass testval argument or provide one of these.

What am I doing wrong?

È stato utile?

Soluzione

This is because there were no initial values passed for the variables in the model. Usually this is no problem because the model just takes the mean/median/mode of each distribution and uses those. The multinomial is difficult because the mean usually gives values outside the support (i.e. non-integer values) and the mode is difficult to compute.

The short-term solution is to supply initial values at least for the multinomial. I will file an issue on the bug tracker for this to figure out what to do long-term.

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