Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

The third column in my numpy array is Age. In this column about 75% of the entries are valid and 25% are blank. Column 2 is Gender and using some manipulation I have calculated the average age of the men in my dataset to be 30. The average age of women in my dataset is 28.

I want to replace all blank Age values for men to be 30 and all blank age values for women to be 28.

However I can't seem to do this. Anyone have a suggestion or know what I am doing wrong?

Here is my code:

# my entire data set is stored in a numpy array defined as x

ismale = x[::,1]=='male'
maleAgeBlank = x[ismale][::,2]==''
x[ismale][maleAgeBlank][::,2] = 30 

For whatever reason when I'm done with the above code, I type x to display the data set and the blanks still exist even though I set them to 30. Note that I cannot do x[maleAgeBlank] because that list will include some female data points since the female data points are not yet excluded.

Is there any way to get what I want? For some reason, if I do x[ismale][::,1] = 1 (setting the column with 'male' equal to 1), that works, but x[ismale][maleAgeBlank][::,2] = 30 does not work.

sample of array:

#output from typing x
array([['3', '1', '22', ..., '0', '7.25', '2'],
   ['1', '0', '38', ..., '0', '71.2833', '0'],
   ['3', '0', '26', ..., '0', '7.925', '2'],
   ..., 
   ['3', '0', '', ..., '2', '23.45', '2'],
   ['1', '1', '26', ..., '0', '30', '0'],
   ['3', '1', '32', ..., '0', '7.75', '1']], 
  dtype='<U82')

#output from typing x[0]

array(['3', '1', '22', '1', '0', '7.25', '2'], 
  dtype='<U82')

Note that I have changed column 2 to be 0 for female and 1 for male already in the above output

share|improve this question
    
can you post a sample of the array? –  void Nov 10 '13 at 0:40
    
@void now added. –  Chowza Nov 10 '13 at 0:44

3 Answers 3

up vote 1 down vote accepted

How about this:

my_data =  np.array([['3', '1', '22', '0', '7.25', '2'],
                     ['1', '0', '38', '0', '71.2833', '0'],
                     ['3', '0', '26', '0', '7.925', '2'],
                     ['3', '0', '', '2', '23.45', '2'],
                     ['1', '1', '26', '0', '30', '0'],
                     ['3', '1', '32', '0', '7.75', '1']], 
                     dtype='<U82')

ismale = my_data[:,1] == '0'
missing_age = my_data[:, 2] == ''
maleAgeBlank = missing_age & ismale
my_data[maleAgeBlank, 2] = '30'

Result:

>>> my_data
array([[u'3', u'1', u'22', u'0', u'7.25', u'2'],
       [u'1', u'0', u'38', u'0', u'71.2833', u'0'],
       [u'3', u'0', u'26', u'0', u'7.925', u'2'],
       [u'3', u'0', u'30', u'2', u'23.45', u'2'], 
       [u'1', u'1', u'26', u'0', u'30', u'0'],
       [u'3', u'1', u'32', u'0', u'7.75', u'1']], 
      dtype='<U82')
share|improve this answer
    
Perfect! Thank you, very clean and understandable. Didn't even think of the & operation. –  Chowza Nov 10 '13 at 1:33

You could try iterating through the array in a simpler way. It's not the most efficient solution, but it should get the job done.

for row in range(len(x)):
    if row[2] == '':
        if row[1] == 1:
            row[2] == 30
        else:
            row[2] == 28
share|improve this answer
    
using a for loop with a numpy array is called nonsense. You loose the advantages of numpy by iterating. –  void Nov 10 '13 at 0:54
    
@void That's fair. I'm not saying there aren't better solutions. But if all the OP cares about is getting this particular task solved quickly, hopefully this will help. –  ASGM Nov 10 '13 at 0:57
    
Using where is more efficient. Check my answer. –  void Nov 10 '13 at 0:59

You can use the where function:

arr = array([['3', '1', '22', '1', '0', '7.25', '2'], 
            ['3', '', '22', '1', '0', '7.25', '2']], 
           dtype='<U82')

blank = np.where(arr=='')

arr[blank] = 20

array([[u'3', u'1', u'22', u'1', u'0', u'7.25', u'2'],
       [u'3', u'20', u'22', u'1', u'0', u'7.25', u'2']], 
      dtype='<U82')

If you want to change a specific column you can do the do the following:

male = np.where(arr[:, 1]=='') # where 1 is the column
arr[male] = 30

female = np.where(arr[:, 2]=='') # where 2 is the column
arr[female] = 28
share|improve this answer
    
where is efficient, but the current solution doesn't check the row's gender value and changes all blanks, not just those in the age column. –  ASGM Nov 10 '13 at 1:01
    
Doesn't he want to change the blank values of age to the average? The ages columns are only 1 and 2 for male and femalte. SO he needs 2 where for both columns only. –  void Nov 10 '13 at 1:08

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.