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I have one dataframe, let's call it df1, with a a MultiIndex (just a snippet, there are many more columns and rows)

                                             M1_01  M1_02  M1_03  M1_04  M1_05
Eventloc                  Exonloc                                             
chr10:52619746-52623793|- 52622648-52622741      0      0      0      0      0
chr19:58859211-58865080|+ 58864686-58864827      0      0      0      0      0
                          58864686-58864840      0      0      0      0      0
                          58864744-58864840      0      0      0      0      0
chr19:58863054-58863649|- 58863463-58863550      0      0      0      0      0

And another dataframe, let's go with the creative name df2, like this (these are the results of different algorithms, which is why they have different indices). The columns are the same, though in the first df they are not sorted.

                                                                                  M1_01  M1_02  M1_03  M1_04  M1_05
chr3:53274267:53274364:-@chr3:53271813:53271836:-@chr3:53268999:53269190:-         0.02    NaN    NaN    NaN    NaN
chr2:9002720:9002852:-@chr2:9002401:9002452:-@chr2:9000743:9000894:-               0.04    NaN    NaN    NaN    NaN
chr1:160192441:160192571:-@chr1:160190249:160190481:-@chr1:160188639:160188758:-    NaN    NaN    NaN    NaN    NaN
chr7:100473194:100473333:+@chr7:100478317:100478390:+@chr7:100478906:100479034:+    NaN    NaN    NaN    NaN    NaN
chr11:57182088:57182204:-@chr11:57177408:57177594:-@chr11:57176648:57176771:-       NaN    NaN    NaN    NaN    NaN 

And I have this dataframe, again let's be creative and call it df3, which unifies the indices of df1 and df2:

                                                                                                    Eventloc              Exonloc
chr3:53274267:53274364:-@chr3:53271813:53271836:-@chr3:53268999:53269190:-          chr3:53269191-53274267|-    53271812-53271836
chr2:9002720:9002852:-@chr2:9002401:9002452:-@chr2:9000743:9000894:-                  chr2:9000895-9002720|-      9002400-9002452
chr1:160192441:160192571:-@chr1:160190249:160190481:-@chr1:160188639:160188758:-  chr1:160188759-160192441|-  160190248-160190481
chr7:100473194:100473333:+@chr7:100478317:100478390:+@chr7:100478906:100479034:+  chr7:100473334-100478906|+  100478316-100478390
chr4:55124924:55124984:+@chr4:55127262:55127579:+@chr4:55129834:55130094:+          chr4:55124985-55129834|+    55127261-55127579

I need to do a 1:1 comparison of these results, so I tried doing both



df1.ix[pd.MultiIndex.from_tuples(df3.head().values.tolist(), names=['Eventloc', 'Exonloc'])]

But they both give me dataframes of NAs. The only thing that works is:

event_id = df2.index[0]

But this obviously suboptimal as it is not vectorized and very slow. I think I'm missing some critical concept of MultiIndexes.

Thanks, Olga

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Could you try df1.ix[pd.Index(df3.head().values)]? I think that might work for you. –  TomAugspurger Feb 4 '14 at 18:16
Somehow that still doesn't work, even though I've double- and triple-checked the IDs. –  Olga Botvinnik Feb 4 '14 at 18:53
Actually, yes it worked!! My whole issue was that I created df1 by resetting the index of another dataframe and I only took the head() and that's why I wasn't getting any of the overlap. –  Olga Botvinnik Feb 4 '14 at 19:19

1 Answer 1

If I understand what you are doing, you need to either explicity construct the tuples (they must be fully qualifiied tuples though, e.g. have a value for EACH level), or easier, construct a boolean indexer)

In [7]: df1 = DataFrame(0,index=MultiIndex.from_product([list('abc'),[range(2)]]),columns=['A'])

In [8]: df1
a 0  0
b 1  0
c 0  0

[3 rows x 1 columns]

In [9]: df1 = DataFrame(0,index=MultiIndex.from_product([list('abc'),list(range(2))]),columns=['A'])

In [10]: df1
a 0  0
  1  0
b 0  0
  1  0
c 0  0
  1  0

[6 rows x 1 columns]

In [11]: df3 = DataFrame(0,index=['a','b'],columns=['A'])

In [12]: df3
a  0
b  0

[2 rows x 1 columns]

These are all the values of level 0 in the first frame

In [13]: df1.index.get_level_values(level=0)
Out[13]: Index([u'a', u'a', u'b', u'b', u'c', u'c'], dtype='object')

Construct a boolean indexer of the result

In [14]: df1.index.get_level_values(level=0).isin(df3.index)
Out[14]: array([ True,  True,  True,  True, False, False], dtype=bool)

In [15]: df1.loc[df1.index.get_level_values(level=0).isin(df3.index)]
a 0  0
  1  0
b 0  0
  1  0

[4 rows x 1 columns]
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