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Consider this dataset:

data_dict = {'ind' : [1, 2, 3, 4], 'location' : [301, 301, 302, 303], 'ind_var' : [4, 8, 10, 15], 'loc_var' : [1, 1, 7, 3]}
df = pd.DataFrame(data_dict)

df_indexed = df.set_index(['ind', 'location'])
df_indexed

which looks like

           ind_var loc_var
ind location        
1   301      4      1
2   301      8      1
3   302     10      7
4   303     15      3

ind_var is a variable that varies by ind ( = individual) and loc_var varies by location. (I also have an extra variable that varies by both ind and location, but I'm omitting it to simplify the presentation)

I need to transform the data to have each individual index contain all the possible locations. I can reindex in this way (just showing individuals 1 to 3):

new_shape = [(1, 301), (1, 302), (1, 303), (2, 301), (2, 302), (2, 303), (3, 301), (3, 302), (3, 303)]
idx = pd.Index(new_shape)
df2 = df_indexed.reindex(idx, method = None)
df2.index.names = ['id', 'location']

which gives

        ind_var loc_var
id  location        
1   301     4     1
    302    NaN   NaN
    303    NaN   NaN
2   301     8     1
    302    NaN   NaN
    303    NaN   NaN
3   301    NaN   NaN
    302    10     7
    303    NaN   NaN

but I need a way to fill the missing values, so that I get:

        ind_var loc_var
id  location        
1   301     4     1
    302     4     7
    303     4     3
2   301     8     1
    302     8     7
    303     8     3
3   301    10     1
    302    10     7
    303    10     3

I tried two different things with no success:

1) Using a loc_dict = {301 : 1, 302 : 7, 303 : 3} to replace loc_var and a ind_dict = {1 : 4, 2: 8, 3: 10, 4 : 15} to replace ind_var

2) Using a groupby method.

# First reset index
df_non_indexed = df2.reset_index() 
df_non_indexed['loc_var'] = df_non_indexed.groupby(['location'])['loc_var'].transform(lambda x: x.fillna(method='ffill')) 

This almost works, but only does the fill forward (or backwards)

There must be a very simple way of doing this, but I haven't been able to figure it out! Thanks for your time.

Note: this is related to my question reshaping from wide to long. I've taken a different approach and simplified in hope that this one is easier to understand.

share|improve this question
    
I think you're second table has a typo. The values for (2, 201) should be moved to (2, 202) –  TomAugspurger Jul 18 '13 at 17:37
    
What is the desired output (not a fill forward?) –  Andy Hayden Jul 18 '13 at 17:52
    
My first instinct would be to have a list of dictionaries [{'301':(4,1), '302':(nan, nan), '303':(nan,nan)}, {'301':...} and so on. If you worked with this dictionary, filling it in, might it then be easier to extract the data_dict that you want? Sorry unfamiliar with pandas –  A.Wan Jul 18 '13 at 18:37
    
@TomAugspurger: I don't think there's a typo, I made the example so that both indiv 1 and 2 choose the same location, 301 –  cd98 Jul 18 '13 at 21:20
    
AndyHayden: I've added the table with the way the data should look like. The 'ffill' method fills in only some of the NaN, but not the ones that are "behind" the non-missing value. –  cd98 Jul 18 '13 at 21:21

2 Answers 2

up vote 1 down vote accepted

Much cleaner solution than my original. Thanks @cd98

In [41]: loc_dict = {301 : 1, 302 : 7, 303 : 3}

In [42]: ind_dict = {1 : 4, 2: 8, 3: 10}

In [198]: df2 = df2.reset_index()

In [199]: df2
Out[199]: 
   index  id  location  ind_var  loc_var
0      0   1       301        4        1
1      1   1       302      NaN      NaN
2      2   1       303      NaN      NaN
3      3   2       301        8        1
4      4   2       302      NaN      NaN
5      5   2       303      NaN      NaN
6      6   3       301      NaN      NaN
7      7   3       302       10        7
8      8   3       303      NaN      NaN

In [200]: df2['ind_var'] = df2.id.map(ind_dict)

In [201]: df2['loc_var'] = df2.location.map(loc_dict)

In [202]: df2
Out[202]: 
   index  id  location  ind_var  loc_var
0      0   1       301        4        1
1      1   1       302        4        7
2      2   1       303        4        3
3      3   2       301        8        1
4      4   2       302        8        7
5      5   2       303        8        3
6      6   3       301       10        1
7      7   3       302       10        7
8      8   3       303       10        3

In [203]: df2 = df2.set_index(['id', 'location'])

In [204]: df2
Out[204]: 
             index  ind_var  loc_var
id location                         
1  301           0        4        1
   302           1        4        7
   303           2        4        3
2  301           3        8        1
   302           4        8        7
   303           5        8        3
3  301           6       10        1
   302           7       10        7
   303           8       10        3
share|improve this answer
    
Yes, it does work, thanks a lot! Let's see if somebody posts something slightly simpler, otherwise I'll accept your answer –  cd98 Jul 18 '13 at 21:39
    
Heh, it's easily possible that there's something simple I'm missing. –  TomAugspurger Jul 18 '13 at 21:39
    
This is simpler, but I had to reset the index. df_original = df2.copy() df_original = df_original.reset_index()' df_original['ind_var'] = df_original['id'].map(ind_dict)` df_original['loc_var'] = df_original['rbd'].map(loc_dict) –  cd98 Jul 18 '13 at 23:14
    
If you prefer the solution in my previous comment, please go ahead and edit your answer. Otherwise, I'll add it as an answer myself, I don't know what's considered cleaner in this site. –  cd98 Jul 18 '13 at 23:23
    
Just for completeness, there is no need to reset the index. We can access the different levels of the index this way: df2['ind_var'] = df2.index.map(lambda x : ind_dict[x[0]] ) and df2['loc_var'] = df2.index.map(lambda x : loc_dict[x[1]] ) –  cd98 Jul 19 '13 at 15:15

This can be done by stack/unstack and groupby very easily:

# unstack to wide, fillna as 0s
df_wide = df_indexed.unstack().fillna(0)
# stack back to long
df_long = df_wide.stack()
# change 0s to max using groupby.
df_long['ind_var'] = df_long['ind_var'].groupby(level = 0).transform(lambda x: x.max())
df_long['loc_var'] = df_long['loc_var'].groupby(level = 1).transform(lambda x: x.max())
print df_long

This gives you the results:

                   ind_var  loc_var
ind location                  
1   301             4        1
    302             4        7
    303             4        3
2   301             8        1
    302             8        7
    303             8        3
3   301            10        1
    302            10        7
    303            10        3
4   301            15        1
    302            15        7
    303            15        3
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