I'm getting a very odd error using a basic shortcut method in python. It seems, unless I'm being very stupid, I get different values for A = A + B, and A += B. Here is my code:

``````def variance(phi,sigma,numberOfIterations):
variance = sigma
for k in range(1,numberOfIterations):
phik = np.linalg.matrix_power(phi,k)
variance = variance + phik*sigma*phik.T
return variance
``````

This basically just calculates the covariance of a vector autoregression. So for:

``````phi    = np.matrix('0.7 0.2 -0.1; 0.001 0.8 0.1; 0.001 0.002 0.9')
sigma  = np.matrix('0.07 0.01 0.001; 0.01 0.05 0.004; 0.001 0.004 0.01')
``````

I get:

``````variance(phi,sigma,10) =
[[ 0.1825225   0.07054728  0.00430524]
[ 0.07054728  0.14837229  0.02659357]
[ 0.00430524  0.02659357  0.04657858]]
``````

This is correct I believe (agrees with Matlab). Now if I change the line above to

``````variance += phik*sigma*(phik.T)
``````

I get:

``````variance(phi,sigma,10) =
[[ 0.34537165  0.20258329  0.04365378]
[ 0.20258329  0.33471052  0.1529369 ]
[ 0.04365378  0.1529369   0.19684553]]
``````

Whats going on?

Many thanks

Dan

-
`A = A.__add__(B)` != `A = A.__iadd__(B)` if A is mutable –  JBernardo Jun 6 '12 at 3:50
It's also kind of weird to have a variable in the scope of your function with the same name as the function. –  Bi Rico Jun 6 '12 at 6:47

The culprit is:

``````variance = sigma
``````

If you change that to:

``````variance = sigma.copy()
``````

You'll see the correct result.

This is because `+=` actually performs a (more efficient) in-place addition… And since both `variance` and `sigma` reference the same array, both will be updated. For example:

``````>>> sigma = np.array([1])
>>> variance = sigma
>>> variance += 3
>>> sigma
array([4])
``````
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Thank you, much appreciated! –  Dan Jun 6 '12 at 10:33