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Feb
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awarded  Good Answer
Jan
29
comment Predicate function to determine if two indexes have the same levels
Is this the output you get for the example in your question? If so, that's not what I get. Granted, I'm using Python 3, but the results should be the same; I can't think of any differences between Python 3 and 2.7 that would account for this.
Jan
29
answered Predicate function to determine if two indexes have the same levels
Jan
29
comment Predicate function to determine if two indexes have the same levels
OK. You might consider editing your question to clarify that, so it will still be clear after these comments disappear.
Jan
29
comment Predicate function to determine if two indexes have the same levels
OK, so if I understand correctly: you want something which goes through each row of df_a, takes that row's index entry, and tells you whether there is a row in df_b with the same index entry?
Jan
29
revised Numpy cannot broadcast array
put code inline and improve title
Jan
29
comment Predicate function to determine if two indexes have the same levels
I don't understand the desired algorithm. Why are there eight items in your output, when your data frames have 10 and 5 rows respectively? Also, when you say "index", do you mean the index entry for one row, which is a tuple like (0,1), (1,1), etc.? Note that in Pandas terminology, "index" is the collection of all the index entries, and that each DataFrame has exactly one index.
Jan
19
comment Limits of quad integration in scipy with np.inf
Oh right, I forgot about the shift.
Jan
19
comment Limits of quad integration in scipy with np.inf
I don't see the problem here. You do realize the second integral is supposed to be zero, right? (You're integrating an odd function, x times the PDF, over a symmetric interval)
Jan
19
awarded  Yearling
Jan
17
awarded  Guru
Jan
14
awarded  Nice Answer
Jan
14
comment Python creating a dictionary of lists
@AlexGidan That's true, but not particularly relevant to this question.
Jan
10
comment Multiplying all combinations of array elements in numpy
@FabianWerner the edit I just put in should help make things more clear.
Jan
10
revised Multiplying all combinations of array elements in numpy
explain about dot products and outer products
Jan
10
comment Multiplying all combinations of array elements in numpy
@FabianWerner (2 comments up) ohhhhh, I think I see why you were confused now. You were using dot() for something that it can do, but is not quite intended for, and I forgot that it can do that, so I didn't understand why you were confused. Let me edit my answer again. (1 comment up) Much better.
Jan
10
revised Multiplying all combinations of array elements in numpy
add note about argument order
Jan
10
comment Multiplying all combinations of array elements in numpy
In the logistic() function you showed, they are doing something entirely different from what you're asking about here. They're calculating a dot product (which is a single number), not an outer product.
Jan
10
comment Multiplying all combinations of array elements in numpy
@FabianWerner I really recommend moving that part to a separate question. While you're at it, please remove the "ANSWER: ..." part from question #1. Answers shouldn't be edited into the question.
Jan
10
comment Multiplying all combinations of array elements in numpy
I think it might be better to remove question #2 from this post and post it separately. Though I don't really understand what it means. Of course numpy.array([0.0, 1.0]) isn't going to be the same as [3, 4] because the numbers are different: one has 0 in the first position and the other has 3, for example. But I'm guessing that's not what you mean?