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Apologies if I don't get this right the first time, as I am new to both this forum and Python. I am attempting to do logistic regression and would like to calculate the sigmoid function.

Code:

import numpy as np

csv_file_object = csv.reader(open('train.csv', 'rb')) 
header = csv_file_object.next()                       

train_data=[]                                           

for row in csv_file_object:                             
    train_data.append(row[1:])                          

train_data = np.array(train_data) 

X = train_data

X = np.c_[ np.ones(N), X ]   # print type(X) gives <type 'numpy.ndarray'>

def sigmoid(z):
    s = 1.0 / (1.0 + np.exp**(-1.0 * z))
    return s

print sigmoid(X)

Error

When I run this I get the following error:

Traceback (most recent call last): File "C:\Users...", line 63, in

print sigmoid(X)

File "C:\Users...", line 59, in sigmoid

s = 1.0 / (1.0 + np.exp**(-1.0 * z))

TypeError: unsupported operand type(s) for *: 'float' and 'numpy.ndarray'

I have tried switching the 1.0's to 1's and then get 'int' instead of 'float' in the error and using '.astype(np.float)' and other attempts. I have looked for similar questions and have looked at the documentation but have been unable to find a solution (or understand that I was indeed reading a solution!): http://docs.scipy.org/doc/numpy/reference/generated/numpy.exp.html

How to calculate a logistic sigmoid function in Python?

My understanding is the exponential function should perform an element-wise exponentiation for each element in the array.

What am I missing?

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2  
exp(-1.0*z) should solve your problem, (numpy.exp is the exponential function, not the euler-number) –  usethedeathstar Jul 16 '13 at 8:31

3 Answers 3

numpy.exp is a function, and you are trying to apply the exponentiation operator to that function. Python clearly has no idea what you are talking about.

You need to pick either numpy exponentiation or Python exponentiation, not both. Look at the syntax in the documentation that you linked to.

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Ah yes, I was staring at the solution. Thanks. –  pentandrous Jul 16 '13 at 2:07

Remove the ** and it will be fixed

np.exp has the power function inside of it that's why you get an error

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Aside from the syntax error pointed out by @roippi, you can use the numpy I/O functions; there's no need to go via the csv module.

Another problem is that the csv module is giving you strings, and so your train_data winds up not being an ndarray with float dtype (the jargon for what kind of objects are being stored in a numpy array).

For example, something like this should work:

>>> !cat train.csv
a,b,c
1,2,3
2,3,4
4,5,6
>>> train_data = np.loadtxt("train.csv", skiprows=1, delimiter=",")
>>> train_data
array([[ 1.,  2.,  3.],
       [ 2.,  3.,  4.],
       [ 4.,  5.,  6.]])
>>> np.exp(train_data)
array([[   2.71828183,    7.3890561 ,   20.08553692],
       [   7.3890561 ,   20.08553692,   54.59815003],
       [  54.59815003,  148.4131591 ,  403.42879349]])

Alternatively, you can simply force a conversion. Starting from what you have, which might be something like this:

>>> train_data
array([['2', '3'],
       ['3', '4'],
       ['5', '6']], 
      dtype='|S1')

(Note the dtype here.) You can specify the type:

>>> train_data.astype(float)
array([[ 2.,  3.],
       [ 3.,  4.],
       [ 5.,  6.]])
>>> np.array(train_data, dtype=float)
array([[ 2.,  3.],
       [ 3.,  4.],
       [ 5.,  6.]])
share|improve this answer
    
Excellent, this is simpler I/O method. And this was also necessary to fix the problem as I had an array of strings. Thank you. –  pentandrous Jul 16 '13 at 2:12

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