I'm pretty new to PyMC, and I'm trying to implement a fairly simple Bayesian correlation model, as defined in chapter 5 of "Bayesian Cognitive Modeling: A Practical Course", which is as defined below:

Graphical model

I've put my code in an ipython notebook here, a code snippet is as follows:

mu1 = Normal('mu1', 0, 0.001)
mu2 = Normal('mu2', 0, 0.001)
lambda1 = Gamma('lambda1', 0.001, 0.001)
lambda2 = Gamma('lambda2', 0.001, 0.001)
rho = Uniform('r', -1, 1)

def mean(mu1=mu1, mu2=mu2):
    return np.array([mu1, mu2])

def precision(lambda1=lambda1, lambda2=lambda2, rho=rho):
    sigma1 = 1 / sqrt(lambda1)
    sigma2 = 1 / sqrt(lambda2)
    ss1 = sigma1 * sigma2
    ss2 = sigma2 * sigma2
    rss = rho * sigma1 * sigma2
    return np.power(np.mat([[ss1, rss], [rss, ss2]]), -1)

xy = MvNormal('xy', mu=mean, tau=precision, value=data, observed=True)

M = pymc.MCMC(locals())
M.sample(10000, 5000)

The error I get is "error: failed in converting 3rd argument `tau' of flib.prec_mvnorm to C/Fortran array"

I only found one other reference to this error (in this question) but I couldn't see how to apply the answer from there to my code.

  • I have no idea neither about Python nor Bayesian statistics, but this seems like a runtime problem somewhere deep in the code. You can probably do nothing about it, but you may want to report the issue to the package developer(s) and seek their advice. – StasK Dec 16 '14 at 14:27
  • The problem with migrating it, is that after Abraham D Flaxman's partial answer, this is now definitely a Bayesian modelling issue, and not a coding issue ... unlikely to get an answer here. – tdc Dec 17 '14 at 12:30
  • 1
    Argh. The developers should have provided an informative error message. That an input matrix has wrong dimensions is something very easy to check, and they should have done this. – StasK Dec 18 '14 at 16:03
  • I guess this might not be relevant anylonger, but I have found your main issue. Instead of ss1 = sigma1 * sigma2 you should write ss1 = sigma1 * sigma1. Unfortunately, the results still are not "correct" all the time somehow. – fsociety Aug 19 '15 at 12:21
  • @barsch good spot! I've updated the notebook to reflect this. The rho values seem to be pretty wild as you say. – tdc Aug 19 '15 at 14:44

This uninformative error is due to the way you have organized your data vector. It is 2 rows by n columns, and PyMC expects it to be n rows by 2 columns. The following modification makes this code (almost) work for me:

xy = MvNormal('xy', mu=mean, tau=precision, value=data.T, observed=True)

I say almost because I also changed your precision matrix to not have the matrix power part. I think that the MvNormal in your figure has a variance-covariance matrix as the second parameter, while MvNormal in PyMC expects a precision matrix (equal to the inverse of C).

Here is a notebook which has no more errors, but now has a warning that requires additional investigation.

  • I've marked it as accepted, since you fixed the bugs (thanks!), but I'm still not getting reasonable results – tdc Dec 18 '14 at 13:45
  • try another question, then... this should be do-able. To address the warnings, I would look at the initial values for lambda. Also ss1 might not be defined as you intended, and the parameter for mu is precision, not variance. – Abraham D Flaxman Dec 19 '14 at 15:43
  • Thanks @AbrahamDFlaxman The link to the notebook doesn't work or stopped working. Any chance we can bring it up again? – Amelio Vazquez-Reina Dec 24 '14 at 13:40
  • maybe a glitch in nbvviewer? it is working for me now. – Abraham D Flaxman Dec 24 '14 at 16:17

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