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I have data about pulications, which contain issn, year, volume and issue. So for example

1234-x000, 2013, 1, 2
1234-x000, 2013, 1, 1
1234-x000, 2012, 6, 2
1234-x000, 2012, 6, 1
1234-x000, 2012, 5, 2
....
4321-yyyy, 2013, 2, 1
4321-yyyy, 2013, 1, 1
4321-yyyy, 2012, 12, 1
4321-yyyy, 2012, 11, 1
....

I want to identify missing data. One problem is, that the volume/issue structure is not always the same. So for one issn there might be 12 issues per volume or only 6 or ... But the number per year an issn can be assumed to be fixed.

My pandas knowledge is still very basic. I have the feeling, that I should be able to identify the missing values with a few lines of clever pandas code, but I don't get it. Any hint how to solve that?

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Can give some examples for your missing data case? –  waitingkuo Apr 9 '13 at 14:00
    
For a given year, there might be volumes 1,2,3,4,6,7,...12. So volume 5 would be missing. –  Achim Apr 9 '13 at 14:03
    
What if miss the last volume or last issue for a volume? –  waitingkuo Apr 9 '13 at 14:06
    
That would also be a "missing value" or a gap. "Gap" might not be good term if you just look at the year or volume, but if you take the whole data into account it's ok again. ;-) –  Achim Apr 9 '13 at 14:08
    
How would you know that you have missing data, if the item that should have 12 volumes only has the first 6? –  root Apr 9 '13 at 14:11

2 Answers 2

This isn't a full solution, for example it assumes, that the last volume is always present. But as you asked for a pointer, this should get you going:

In [28]: df
Out[28]: 
        issn  year  vol  issue
0  1234-x000  2013    1      2
1  1234-x000  2013    1      1
2  1234-x000  2012    6      2
3  1234-x000  2012    6      1
4  1234-x000  2012    5      2
5  4321-yyyy  2013    2      1
6  4321-yyyy  2013    1      1
7  4321-yyyy  2012   12      1
8  4321-yyyy  2012   11      1

In [29]: vols = df.groupby('issn').vol.max()

In [30]: vols
Out[30]: 
issn
1234-x000     6
4321-yyyy    12
Name: vol

In [31]: for k, g in df.groupby(['issn','year']):
    ...:     print k
    ...:     print 'missing: ', np.setdiff1d(np.arange(1, vols[k[0]]+1),
    ...:                                                g.issue.values)

output:

('1234-x000', 2012)
missing:  [ 3.  4.  5.  6.]
('1234-x000', 2013)
missing:  [ 3.  4.  5.  6.]
('4321-yyyy', 2012)
missing:  [  2.   3.   4.   5.   6.   7.   8.   9.  10.  11.  12.]
('4321-yyyy', 2013)
missing:  [  2.   3.   4.   5.   6.   7.   8.   9.  10.  11.  12.]
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Here's one way. I would add two columns 'idx' and 'max'

In [452]: df['idx'] = df.groupby(['issn']).apply(lambda sdf: (sdf.volume - 1) * sdf.issue.max() + sdf.issue)

In [453]: df
Out[453]:
        issn  year  volume  issue  idx
0  1234-x000  2013       1      2    2
1  1234-x000  2013       1      1    1
2  1234-x000  2012       6      2   12
3  1234-x000  2012       6      1   11
4  1234-x000  2012       5      2   10
5  4321-yyyy  2013       2      1    2
6  4321-yyyy  2013       1      1    1
7  4321-yyyy  2012      12      1   12
8  4321-yyyy  2012      11      1   11

In [454]: df['max'] = df.groupby(['issn']).idx.transform(lambda s: s.max())

In [455]: df
Out[455]:
        issn  year  volume  issue  idx  max
0  1234-x000  2013       1      2    2   12
1  1234-x000  2013       1      1    1   12
2  1234-x000  2012       6      2   12   12
3  1234-x000  2012       6      1   11   12
4  1234-x000  2012       5      2   10   12
5  4321-yyyy  2013       2      1    2   12
6  4321-yyyy  2013       1      1    1   12
7  4321-yyyy  2012      12      1   12   12
8  4321-yyyy  2012      11      1   11   12

The previous answer provides the rest

In [462]: df.groupby(['issn', 'year']).apply(lambda sdf: np.setdiff1d(range(1, sdf['max'].irow(0)), sdf.idx).tolist())
Out[462]:
issn       year
1234-x000  2012        [1, 2, 3, 4, 5, 6, 7, 8, 9]
           2013      [3, 4, 5, 6, 7, 8, 9, 10, 11]
4321-yyyy  2012    [1, 2, 3, 4, 5, 6, 7, 8, 9, 10]
           2013      [3, 4, 5, 6, 7, 8, 9, 10, 11]
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