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======================== UPDATE #2 =============================================

What a day. I am very slowly making progress. But while PANDAS is very fast and powerful it has a steep learning curve and there are not very good examples (at least for what I am trying to do).

The latest issue is with a specific line:

 catfile = infile[infile['dtu_topic_split'].map(lambda x: any(targetcat in x))]

which works in IPyNotebook, but not under Ubuntu and python 2.7

here is the error on Ubuntu:

    Traceback (most recent call last):
      File "scikit2.py", line 27, in <module>
        catfile = infile[infile['dtu_topic_split'].map(lambda x: any(targetcat in x))]
      File "/usr/local/lib/python2.7/dist-packages/pandas-0.11.0-py2.7-linux-x86_64.egg/pandas/core/series.py", line 2408, in map
        mapped = map_f(values, arg)
      File "inference.pyx", line 861, in pandas.lib.map_infer (pandas/lib.c:41822)
      File "scikit2.py", line 27, in <lambda>
        catfile = infile[infile['dtu_topic_split'].map(lambda x: any(targetcat in x))]
    TypeError: 'bool' object is not iterable

and the working code + results in iPyNotebook

targetcat = 'Financial Services Industries'
#targetcat = 'Payroll & Employment Tax'
criterion = foo[foo['dtu_topic_split'].map(lambda x: any(targetcat in x))]
print criterion[['dtu_docid','dtu_topic_split']][:10]



     dtu_docid                                    dtu_topic_split
9    2010-0185                    [Financial Services Industries]
17   2010-0152  [Financial Services Industries, International ...
46   2012-1421  [Financial Services Industries, Payroll & Empl...
49   2012-1413  [Financial Services Industries, Payroll & Empl...
66   2012-1370  [Energy Taxation, Financial Services Industrie...
94   2009-1786                    [Financial Services Industries]
144  2012-1170       [Financial Services Industries, Real Estate]
163  2012-1101       [Financial Services Industries, Real Estate]
170  2009-1386                    [Financial Services Industries]
249  2012-0754  [Expatriate Taxation, Financial Services Indus...

Here is the python version for iPYNotebook

print sys.version
2.7.4 (default, Apr 19 2013, 18:28:01) 
[GCC 4.7.3]

and from Ubuntu:

>>> import sys
>>> print sys.version
2.7.4 (default, Apr 19 2013, 18:28:01) 
[GCC 4.7.3]
>>> 

Need help. I am sure I could be done with this data set-up and grooming if I used traditional processing. Still trying PANDAS but this is tough sledding and the saddest part is I am not even sure why the stuff I got to work, works. These type of errors breed frustration

======================== UPDATE #1 =============================================

Using the info in the 1st answer (thanks tshauck) I have found one way to accomplish the issue:

targetcat = 'International Taxation'
criterion = foo[foo['dtu_topic_split'].map(lambda x: any(targetcat in x))]

This yields a list of rows where the targetcat is in the dataframe.dtu_topic_split series. Given I am new to panda is this the best way to handle. My intention it to build separate training modules for each of the 30-50 categories. I am unsure if I should iterate over the approximately 100K records in more traditional python style, or use the pandas technique. Again any alternatives or advise would be greatly appreciated.


I am new to Pandas and struggling to learn how to make use of the powerful capabilities. I posted yesterday with a strategy to solve this problem by building a separate dataframe. After reading more I am not sure it is the most efficient. I have tried several techniques to slect specific rows form a datafarame based on the existance of a specific value in a series field of the dataframe. Below is an sample of the data and my attempts.

print foo[['dtu_docid','dtu_topic_split']]

/home/davidwaldrop/Dropbox/Miscelaneous/E&Y M&C Project/scikit training
   dtu_docid                                    dtu_topic_split
0  2012-1553          [Energy Taxation, State & Local Taxation]
1  2012-1552         [Legislation & Policy, Financial Services]
2  2010-0227            [Quantitative Economics and Statistics]
3  2010-0215                     [International Taxation, Asia]
4  2012-1529  [Ernst & Young Newsletters, This Week in Tax R...

And here is what I am working on now, to no avail:

targetcat = ['International Taxation']

criterion = foo['dtu_topic_split'].map(lambda x: x == targetcat)

print foo[criterion]

Empty DataFrame
Columns: [id, dtu_docid, dtu_topic, dtu_content, dtu_topic_split]
Index: []

What I want is a dataframe containing the records where 'International Taxation' is in the series stored in the field dtu_topic_split, or in the above example the record in foo[3] with a dtu_topic_split value of [International Taxation, Asia].

As I mentioned I am really trying to learn Pandas and think it very powerful. As a newbie it is very difficult to not only find a way to do what I want, but also the best way along with the rational. My instinct tells me this may best be done with indexing, but I have not even gotten to that feature yet. Any insight is most appreciated.

share|improve this question

2 Answers 2

Hopefully I'm understanding your particular use-case well enough to provide a decent answer.

Given some data:

data = """
dtu_docid|dtu_topic_split
9|2010-0185|['Financial Services Industries']
17|2010-0152|['Financial Services Industries', 'International']
46|2012-1421|['Financial Services Industries', 'Payroll & Employment Tax']
49|2012-1413|['Financial Services Industries', 'Payroll & Employment Tax']
66|2012-1370|['Energy Taxation', 'Financial Services Industries']
94|2009-1786|['Financial Services Industries']
144|2012-1170|['Financial Services Industries', 'Real Estate']
163|2012-1101|['Financial Services Industries', 'Real Estate']
170|2009-1386|['Financial Services Industries']
249|2012-0754|['Expatriate Taxation', 'Financial Services Industries']
""".split('\n')

And with this question in mind:

"What I want is a dataframe containing the records where 'International Taxation' is in the series stored in the field dtu_topic_split"

You might get it into a DataFrame

rows = [row for row in data if len(row) > 0]

cleaned = []
for i, row in enumerate(rows):
    row = row.split('|')
    if i == 0:
        headers = row
    else:
        row = row[1:] # get rid of the index
        row[1] = eval(row[1])
        cleaned.append(row)

df = pd.DataFrame(cleaned, columns=headers)

Which looks like this:

print df
   dtu_docid                                    dtu_topic_split
0  2010-0185                    [Financial Services Industries]
1  2010-0152     [Financial Services Industries, International]
2  2012-1421  [Financial Services Industries, Payroll & Empl...
3  2012-1413  [Financial Services Industries, Payroll & Empl...
4  2012-1370   [Energy Taxation, Financial Services Industries]
5  2009-1786                    [Financial Services Industries]
6  2012-1170       [Financial Services Industries, Real Estate]
7  2012-1101       [Financial Services Industries, Real Estate]
8  2009-1386                    [Financial Services Industries]
9  2012-0754  [Expatriate Taxation, Financial Services Indus...

Now you have this awkward dtu_topic_split column that's a python list. That a little tricky to deal with.

To select rows with one item you're interested in, you can apply a lambda function. For example:

print df.dtu_topic_split.apply(lambda x: 'Energy Taxation' in x)

That'll give you a boolean series.

0    False
1    False
2    False
3    False
4     True
5    False
6    False
7    False
8    False
9    False
Name: dtu_topic_split, dtype: bool

And you can then pass that to df[...] via sub notation.

energy = df[df.dtu_topic_split.apply(lambda x: 'Energy Taxation' in x)]

print energy
   dtu_docid                                   dtu_topic_split
4  2012-1370  [Energy Taxation, Financial Services Industries]

Another way to go that might work better is to get your data into long format.

Going back to the cleaned variable (a list of lists), you could write a little function that "stacks" rows that have more than one topic.

def make_long(cleaned):
    lng = []
    for row in cleaned:
        # row is a list of length 2
        topics = row[1] # second item is the list of topics
        dtu_docid = row[0]
        for topic in topics:
            lng.append([dtu_docid, topic])

    return lng

In this case, cleaned was 10 rows long. When you call make_long, you end up with 17 rows, as any row having more than 1 topic appearing more than once.

make_long(cleaned)
Out[208]: 
[['2010-0185', 'Financial Services Industries'],
 ['2010-0152', 'Financial Services Industries'],
 ['2010-0152', 'International'],
 ['2012-1421', 'Financial Services Industries'],
 ['2012-1421', 'Payroll & Employment Tax'],
 ['2012-1413', 'Financial Services Industries'],
 ['2012-1413', 'Payroll & Employment Tax'],
 ['2012-1370', 'Energy Taxation'],
 ['2012-1370', 'Financial Services Industries'],
 ['2009-1786', 'Financial Services Industries'],
 ['2012-1170', 'Financial Services Industries'],
 ['2012-1170', 'Real Estate'],
 ['2012-1101', 'Financial Services Industries'],
 ['2012-1101', 'Real Estate'],
 ['2009-1386', 'Financial Services Industries'],
 ['2012-0754', 'Expatriate Taxation'],
 ['2012-0754', 'Financial Services Industries']]

Then you can stick that into a dataframe and you should be in business.

lng = pd.DataFrame(make_long(cleaned),
    columns=['dtu_docid', 'dtu_topic_split'])

print lng
    dtu_docid                dtu_topic_split
0   2010-0185  Financial Services Industries
1   2010-0152  Financial Services Industries
2   2010-0152                  International
3   2012-1421  Financial Services Industries
4   2012-1421       Payroll & Employment Tax
5   2012-1413  Financial Services Industries
6   2012-1413       Payroll & Employment Tax
7   2012-1370                Energy Taxation
8   2012-1370  Financial Services Industries
9   2009-1786  Financial Services Industries
10  2012-1170  Financial Services Industries
11  2012-1170                    Real Estate
12  2012-1101  Financial Services Industries
13  2012-1101                    Real Estate
14  2009-1386  Financial Services Industries
15  2012-0754            Expatriate Taxation
16  2012-0754  Financial Services Industries

This way you can select rows by one or several topics at a time using the isin method on the pd.Series object.

selected = ['Financial Services Industries', 'Real Estate']
print lng[lng.dtu_topic_split.isin(selected)]

    dtu_docid                dtu_topic_split
0   2010-0185  Financial Services Industries
1   2010-0152  Financial Services Industries
3   2012-1421  Financial Services Industries
5   2012-1413  Financial Services Industries
8   2012-1370  Financial Services Industries
9   2009-1786  Financial Services Industries
10  2012-1170  Financial Services Industries
11  2012-1170                    Real Estate
12  2012-1101  Financial Services Industries
13  2012-1101                    Real Estate
14  2009-1386  Financial Services Industries
16  2012-0754  Financial Services Industries

Hopefully some of this is helpful!

share|improve this answer

This might not be the exact cause of your issues, but one thing that stands out to me is that you're comparing the exact equality of two lists... when (if I understand) you want to compare the presence of your targetcat in dtu_topic_split... which I guess is list of topics.

Assuming that's the case something like the following may work:

targetcat = ['International Taxation']

criterion = foo['dtu_topic_split'].map(lambda possiblecat: \
    any([t in p for t in targetcat for p in possiblecat]))

I haven't tested this, but I think it'll return true if any category in targetcat is contained in any substring of a category in possiblecat.

share|improve this answer
    
Thanks for the idea. I tried, it but it returns True for everything. I will analyse the map section of the statement, as this is the part most confusing to understand about this specific issue, and Pandas in general. Thanks again. here is what I got as results: criterion = foo['dtu_topic_split'].map(lambda possiblecat: any([t in p for t in targetcat for p in possiblecat])) print criterion print foo[criterion] 0 True 1 True 2 True 3 True 4 True Name: dtu_topic_split, dtype: bool id dtu_docid –  david Jun 30 '13 at 14:36

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