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I am having an issue with Ipython - Numpy. I want to do the following operation:

x^T.x

with x belonging to R^n. x is extracted from a txt file with the instruction:

x = np.loadtxt('myfile.txt')

The problem is that if i use the transpose function

np.transpose(x)

and uses the shape function to know the size of x, i get the same dimensions for x and x^T. Weird thing, it indicates me the size with a L (uppercase) after each dimensions. e.g.

print x.shape
print np.transpose(x).shape

(3L, 5L)
(3L, 5L)

Does anybody know how to solve this?

Thank you!

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4 Answers 4

up vote 0 down vote accepted

As explained by others, transposition won't "work" like you want it to for 1D arrays. You might want to use np.atleast_2d to have a consistent scalar product definition:

def vprod(x):
    y = np.atleast_2d(x)
    return np.dot(y.T, y)
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What np.transpose does is reverse the shape tuple, i.e. you feed it an array of shape (m, n), it returns an array of shape (n, m), you feed it an array of shape (n,)... and it returns you the same array with shape(n,).

What you are implicitly expecting is for numpy to take your 1D vector as a 2D array of shape (1, n), that will get transposed into a (n, 1) vector. Numpy will not do that on its own, but you can tell it that's what you want, e.g.:

>>> a = np.arange(4)
>>> a
array([0, 1, 2, 3])
>>> a.T
array([0, 1, 2, 3])
>>> a[np.newaxis, :].T
array([[0],
       [1],
       [2],
       [3]])
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For starters L just means that the type is a long int. This shouldn't be an issue. You'll have to give additional information about your problem though since I cannot reproduce it with a simple test case:

In [1]: import numpy as np

In [2]: a = np.arange(12).reshape((4,3))

In [3]: a
Out[3]:
array([[ 0,  1,  2],
       [ 3,  4,  5],
       [ 6,  7,  8],
       [ 9, 10, 11]])

In [4]: a.T #same as np.transpose(a)
Out[4]:
array([[ 0,  3,  6,  9],
       [ 1,  4,  7, 10],
       [ 2,  5,  8, 11]])

In [5]: a.shape
Out[5]: (4, 3)

In [6]: np.transpose(a).shape
Out[6]: (3, 4)

There is likely something subtle going on with your particular case which is causing problems. Can you post the contents of the file that you're reading into x?

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The file 'myfile.txt' contain lines such as

5.100000 3.500000 1.400000 0.200000 1
4.900000 3.000000 1.400000 0.200000 1

Here is the code I run:

import numpy as np
data = np.loadtxt('iris.txt')
x = data[1,:]

print x.shape
print np.transpose(x).shape
print x*np.transpose(x)
print np.transpose(x)*x

And I get as a result

(5L,)
(5L,)
[ 24.01   9.     1.96   0.04   1.  ]
[ 24.01   9.     1.96   0.04   1.  ]

I would be expecting one of the two last result to be a scalar instead of a vector, because x^T.x (or x.x^T) should give a scalar.

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You can get what you are after as np.dot(x, x). The * operator in numpy represents element-wise multiplication, not matrix multiplication. –  Jaime Oct 8 '13 at 4:03
    
This isn't an answer, and should be made as an edit to your question instead. Two points: (1) Originally you said that numpy wasn't changing the shape of a (3L, 5L) array, which was very surprising, but isn't not surprising at all that (5L,) stays as (5L,); it's a 1-D object, and its transpose is itself. Was your original report in error? (2) x*np.transpose(x) is an elementwise multiplication of two 1-D arrays, and therefore a 1-D array. –  DSM Oct 8 '13 at 4:03

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