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# Efficient & pythonic check for singular matrix

Working on some matrix algebra here. Sometimes I need to invert a matrix that may be singular or ill-conditioned. I understand it is pythonic to simply do this:

``````try:
i = linalg.inv(x)
catch LinAlgErr as err:
#handle it
``````

but am not sure how efficient that is. Wouldn't this be better?

``````if linalg.cond(x) < 1/sys.float_info.epsilon:
i = linalg.inv(x)
else:
#handle it
``````

Does numpy.linalg simply perform up front the test I proscribed?

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Trying something and reacting to error conditions after they occur is usually the Pythonic way to do things, but the Pythonic way is not always the most efficient way. It's presumed that if you care about doing things "Pythonically," efficiency is a secondary priority. – David Z Nov 6 '12 at 11:03
Say not that efficiency is a secondary priority; say instead that I want to perform bivariate optimization: pythonicity + efficiency (hence the post title). – Dr. Drew Nov 6 '12 at 11:30
In numerical computing it is usually considered bad practice to explicitly calculate the inverse. In most cases it is much better to calculate the LU decomposition with scipy.linalg.lu_factor, then later you can solve it quickly for many vectors using scipy.linalg.lu_solve. – DaveP Nov 7 '12 at 7:03
Correct, but in some cases, the inverse is actually required. I'm not inverting simply to use the result to solve a system of equations. I need the result. – Dr. Drew Nov 7 '12 at 13:19

Your first solution catches the case where your matrix is so singular that numpy cannot cope at all - potentially quite an extreme case. Your second solution is better, because it catches the case where numpy gives an answer, but that answer is potentially corrupted by rounding error - this seems much more sensible.

If you are trying to invert ill-conditioned matrices, then you should consider using singular value decomposition. If used carefully, it can give you a sensible answer where other routines fail.

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The 1st is what I guess (and seems confirmed) is most pythonic, but I wouldn't call it "my solution" :-). After catching the ill-conditionedness, I already know multiple regularization methods I can use to fix it. – Dr. Drew Nov 7 '12 at 13:22
I guess my main message is that before you worry about being "most pythonic", you first make sure that you are being most numerically correct. The second solution you propose is better from that point of view. – DaveP Nov 7 '12 at 21:50
Completely agree with you there DaveP. – Dr. Drew Nov 8 '12 at 9:55

So based on the inputs here, I'm marking my original code block with the explicit test as the solution:

``````if linalg.cond(x) < 1/sys.float_info.epsilon:
i = linalg.inv(x)
else:
#handle it
``````

Surprisingly, the numpy.linalg.inv function doesn't perform this test. I checked the code and found it goes through all it's machinations, then just calls the lapack routine - seems quite inefficient. Also, I would 2nd a point made by DaveP: that the inverse of a matrix should not be computed unless it's explicitly needed.

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Instead of `sys.float_info.epsilon` I prefer `numpy.spacing` since it can be given 1.0 as float16, float32, float64, ..., whatever type `x` is in. – Ahmed Fasih Jan 10 '14 at 2:04
You should use the epsilon for the dtype of the array itself, i.e. `np.finfo(x.dtype).eps`, which may differ from `sys.float_info.epsilon` – ali_m Jul 5 '15 at 11:54

You should compute the condition number of the matrix to see if it is invertible.

``````import numpy.linalg

if numpy.isfinite(numpy.linalg.cond(A)):
B = numpy.linalg.inv(A)
else:
# handle it
``````
-
The matrix will be ill-conditioned when the condition number approaches 1/epsilon. So the second solution which was proposed in the question is better than your solution, which only catches an extremely large condition number. – DaveP Nov 7 '12 at 7:06