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In NumPy, I'm trying to use linalg to compute matrix inverses at each step of a Newton-Raphson scheme (the problem size is small intentionally so that we can invert analytically computed Hessian matrices). However, after I get far along towards convergence, the Hessian gets close to singular.

Is there any method within NumPy that lets me test whether a matrix is considered singular (computing determinant is not robust enough)? Ideally, it would be nice if there's a way to use a try except block to catch NumPy's singular array error.

How would I do this? The NumPy error given at the terminal is:

raise LinAlgError, 'Singular matrix'
numpy.linalg.linalg.LinAlgError: Singular matrix
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1 Answer 1

up vote 11 down vote accepted

The syntax would be like this:

import numpy

try:
  # your code that will (maybe) throw
except numpy.linalg.linalg.LinAlgError as err:
  if 'Singular matrix' in err.message:
    # your error handling block
  else:
    raise
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Thanks. It's one of those head-slapping "d'oh" moments; I didn't realize we could directly use the NumPy errors in an except statement. –  EMS Feb 6 '12 at 5:02
    
Also, is there any way to make this specific to 'Singular matrix' and not just any instance of LinAlgError? –  EMS Feb 6 '12 at 5:04
1  
Well, you can re-raise the caught exception if it's not that message.. see the latest edit to my answer. This is one way to do it, I'm not sure if there is maybe a better way. –  wim Feb 6 '12 at 5:58
    
That's a good solution. Thanks very much. –  EMS Feb 6 '12 at 6:07

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