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I have a Dataset with true and false values for as classifiers. I have a DataFrame representation of this Dataset. However this dataset has about a ratio of 30 : 70 of true and false values for the classifier. I would ideally want 50 : 50 for both classifiers. What is the best way to show how many True and False Values I have of both classifications and then drop some rows of data from the classification with the highest number?

Eg DF :

    Language    Trustworthy
           en   0
           du   0
           li   0
           tm   0
           en   1
           en   0
           en   0
           en   1
           fr   0
           en   1

I would ideally want to drop 4 of the above dataset which has trustworthy value of 0. This is just a very small subset of my Dataset.

share|improve this question
up vote 1 down vote accepted

You can group values in column and than see how many elements is in groups.

data = '''Language    Trustworthy
           en   0
           du   0
           li   0
           tm   0
           en   1
           en   0
           en   0
           en   1
           fr   0
           en   1'''

import pandas as pd
from StringIO import StringIO

df = pd.DataFrame.from_csv( StringIO(data), index_col=None, sep='\s+')

#--------------------------------------------------------------------

print df.groupby('Trustworthy').size()

'''
Trustworthy
0              7
1              3
dtype: int64
'''

or

for name, group in df.groupby('Trustworthy'):
    print "name:", name, "| len:", len(group)

'''
name: 0 | len: 7
name: 1 | len: 3
'''

To drop last 4 rows with 0

df = df.drop( df[ df['Trustworthy'] == 0 ].tail(4).index )

print df

result

  Language  Trustworthy
0       en            0
1       du            0
2       li            0
4       en            1
7       en            1
9       en            1
share|improve this answer
    
Thank You. The grouping worked however when I drop data from tail I don't have 4 data points dropped. For instance in a sample dataset Ive got 93 false and 323 true. When i drop 1,2,3 or any number from tail i end up with 29 false and 187 true. I am not sure whats going on here? – user2233834 Jul 22 '14 at 19:14
    
I thing problem is what is your index. If you use column Language as index than tail(1).index can give you for example en and then all rows with en will be droped. I have unique indexes 0,1,2,...9 so I have no problem with that. Print df.index to see your indexes. Use d.reset_index(inplace=True) to stop using Language as index. – furas Jul 22 '14 at 19:53
    
BTW read_csv use automaticly first column as index, so I use index_col=None to stop that bahavior. – furas Jul 22 '14 at 19:56
    
Resetting index did work. Thank You :) – user2233834 Jul 23 '14 at 9:08

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