Semantics Of Generating Symmetric Matrices In Numpy
I tried to make a random symmetric matrix to test my program. I don't care about the data at all as long as it is symmetric (sufficient randomness is no concern at all). My first
Solution 1:
Those statements aren't semantically equivalent. x.T
returns a view of the original array. in the +=
case, you're actually changing the values of x
as you iterate over it (which changes the values of x.T
).
Think of it this way ... When your algorithm gets to index (3,4)
, it looks something like this in pseudocode:
x[3,4] = x[3,4] + x[4,3]
now, when your iteration gets to (4,3)
, you do
x[4,3] = x[4,3] + x[3,4]
but, x[3,4]
is not what it was when you started iterating.
In the second case, you actually create a new (empty) array and change the elements in the empty array (never writing to x
). So the pseudocode looks something like:
y[3,4] = x[3,4] + x[4,3]
and
y[4,3] = x[4,3] + x[3,4]
which obviously will give you a symmetric matrix (y
.
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