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I have a pandas dataframe indexed by an item_id, with varying numbers of rows per item (that is, item_id X might have 10 rows, while item Y might have only 1). What I want to do is delete from the dataframe all rows corresponding to those item_ids with only one row (i.e. remove all the items with only one observation). So, if a sample of the dataframe looked like this:

item_id measure1    measure2 ...
1       someNumber  someNumber
1       someNumber  someNumber
1       someNumber  someNumber
2       someNumber  someNumber
3       someNumber  someNumber
3       someNumber  someNumber
4       someNumber  someNumber
5       someNumber  someNumber
5       someNumber  someNumber

The new dataframe should look like this:

item_id measure1    measure2   ...
1       someNumber  someNumber 
1       someNumber  someNumber
1       someNumber  someNumber
3       someNumber  someNumber
3       someNumber  someNumber
5       someNumber  someNumber
5       someNumber  someNumber

That is, I want to remove all data for items with only one observation (in this case, item_ids 2 and 4).

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1 Answer 1

up vote 2 down vote accepted

You could use groupby and filter:

>>> df.groupby("item_id").filter(lambda x: len(x) > 1)
   item_id    measure1    measure2
0        1  someNumber  someNumber
1        1  someNumber  someNumber
2        1  someNumber  someNumber
4        3  someNumber  someNumber
5        3  someNumber  someNumber
7        5  someNumber  someNumber
8        5  someNumber  someNumber

In fact, this is very similar to one of the examples in the docs.


Note that, after some discussion in the comments, it became clear that in certain circumstances this doesn't seem to work in 0.12, but does in current trunk. I believe this was fixed in this commit by jreback, which if I'm reading right branches on the type of the filter result, and thus avoids the difficulty.

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This is close enough for me to accept, but it looks like you have to specify a particular column for this to work in cases where there are multiple columns, i.e. df.groupby("item_id").filter(lambda x: len(x.arbitraryColumn) > 1). Otherwise you end up with an error like "ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()" –  moustachio Oct 22 '13 at 3:01
    
.. I'm confused. There are multiple columns in the above example. Are you saying that if you use exactly the line above with your frame, that's the error you see? –  DSM Oct 22 '13 at 3:05
1  
@moustachio: thanks. It definitely works for me (see here) and I think I can see what changed in the code to permit this. [Aside: when I asked "Are you saying that if you use exactly the line above with your frame", I don't think "Exactly" was the right answer. I'd have said instead "no, not exactly -- I'm using groupby(level="item_id"), because I have a MultiIndex, and you're not grouping on an index but a column") –  DSM Oct 22 '13 at 4:25
1  
Okay, I think I can see the commit which fixed this -- the part of the code which is giving you the error message has changed, and in a way which I think explains why it's working for me. –  DSM Oct 22 '13 at 4:39
1  
Yes, this seems to be an example of this issue which has been resolved for version 0.13. If you are working with an older version, try x.count() instead. –  Dan Allan Oct 22 '13 at 12:43

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