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Jul
21 
awarded  Yearling 
Jul
20 
answered  Apply function over relative rows in Pandas 
Apr
9 
comment 
Example to understand scipy basin hopping optimization function
All right, I think we finally have hashed this out as fully as we can. I agree with what you said. 
Apr
8 
comment 
Example to understand scipy basin hopping optimization function
Here's the mechanism I see... optimizer picks x0 + delta . If it's not in bounds or it doesn't improve the objective, it rejects it. If it improves and stays in bounds, that becomes the new x0 . So even with a uniform distribution, over a large number of draws it becomes extremely unlikely that every single delta will result in out of bounds. Can we agree on that? Kind of hard to parse the differences this deep into the comment thread.

Apr
6 
comment 
Example to understand scipy basin hopping optimization function
I wasn't commenting on the generic algorithm, but specifically what's implemented. It's an x0 + delta perturbation with random (normal?) delta as I understand it. It's possible that you would still wander out of bounds indefinitely, but very very unlikely.

Feb
23 
comment 
Example to understand scipy basin hopping optimization function
OP has a custom accept/reject test. If he simply randomly picked points with no local optimization, his optimizer would stay in bounds. Also, if you did the logical AND between the MH test and OP's bounds test, the same thing would occur and there'd be convergence, as the custom piece of the optimizer would reject the point. 
Feb
19 
comment 
Computing the trace of a hat matrix from and independent variable matrix with a large number of rows; how can I avoid memory errors?
Another shortcut: np.linalg.inv(X.T.dot(X)).dot(X.T) == np.linalg.pinv(X)

Feb
13 
revised 
Example to understand scipy basin hopping optimization function
deleted 398 characters in body 
Feb
13 
comment 
Example to understand scipy basin hopping optimization function
I understand now. Basically the accept/reject will result in gradient walking because it will only accept perturbations that improve the objective function. Actually in that case, MH likely won't go out of bounds, so I guess my answer does have some incremental value. Will edit to reflect. 
Feb
12 
comment 
Example to understand scipy basin hopping optimization function
Can you please clarify the factually inaccurate pieces, with regard to what basinhopping as implemented in SciPy does? I don't mind the downvote or anything, but am curious to be corrected. As I understand it, the local minimization piece is what follows the negative gradient, not the global perturbation piece. The reason I posted originally was that I felt that distinction was unclear, although I see that I should have been more careful before saying that your post was inaccurate. 
Nov
21 
awarded  Necromancer 
Sep
24 
awarded  Autobiographer 
Aug
13 
answered  Example to understand scipy basin hopping optimization function 
May
27 
answered  Python: split string at word 
May
2 
comment 
Green Threads vs Non Green Threads
Technically, the connections would be concurrent, you just can't process their requests concurrently. 
Feb
21 
awarded  Caucus 
Feb
8 
awarded  Yearling 
Nov
7 
answered  decoding JSON into Python 
Nov
5 
comment 
C++ Function Pointer — why does this work?
Ok, great, thanks for the VERY comprehensive response! 
Nov
4 
comment 
C++ Function Pointer — why does this work?
Any reason why func refs as parameters are not in tutorials? The ref version seems more idiomatic C++ (versus idiomatic C). 