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I want to fit every member of a list of data sets to a lognormal distribution. Then, I want to calculate the expected value of a function over each distribution. I've tried the following code and get the following error.

Code

   from numpy import *
   from scipy.stats import lognorm
   dists = map(lognorm,data)
   expectations = [dist.expect(r_[1,1],zeros(40,)) for dist in dists]

Error

  AttributeError: 'rv_frozen' object has no attribute 'expect'

Perhaps I'm reading the documentation incorrectly, I though because expect is a method of lognormal it is available to frozen distributions.

What is the right way to call the methods such as 'expect' from a frozen distribution?

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2 Answers 2

up vote 3 down vote accepted

see thread at

http://mail.scipy.org/pipermail/scipy-user/2012-August/032860.html

expect is not yet connected to frozen distributions. Either, use a distribution that is not frozen or use a helper function like

def expect(X, f, lb, ub):
    if hasattr(X, 'dist'):
        return X.dist.expect(f, lb = lb, ub = ub)
    else:
        return X.expect(f, lb = lb, ub = ub)

update:

Besides the problem with the frozen distribution, you need to check the methods of the distributions. You need to use .fit(data, ...) to estimate the parameters.

You can calculate an expected value of a function using expect, the signature is here http://docs.scipy.org/doc/scipy/reference/generated/scipy.stats.rv_continuous.expect.html?highlight=expect#scipy.stats.rv_continuous.expect

Default of expect is the identity mapping that calculates the mean. But you can also get the mean directly form the distribution using either the .mean or the .stats method. This avoids the integration if there is an explicit expression for the mean.

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if you look at the Scjipy Frozen Object, you see that expect is no method of it.

Try :

 from numpy import *
 from scipy.stats import lognorm
 dists = map(lognorm,data)
 expectations = [ lognorm.expect(  func, s, loc  ) for dist in dists]

( I do not know the functions options )

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Doesn't the list comprehension you wrote just iterate over but never use the information in dists? I froze the variable to preserve the shape of the empirically-fitted distribution. –  mac389 Nov 7 '12 at 12:51
    
I don't have the kind of knowledge in stats to answer you : you have to find what to put in func, s and loc ( I would guess the 's' stand for the distribution ) –  georgesl Nov 7 '12 at 12:56
    
Mine is a CS point- the variable in the for loop is never passed as an argument to lognorm.expect. –  mac389 Nov 7 '12 at 13:20

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