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I have a a dataframe with the following structure:

<class 'pandas.core.frame.DataFrame'>
Int64Index: 1152 entries, 0 to 143
Data columns:
cuepos             1152  non-null values
response           1152  non-null values
soa                1152  non-null values
targetpos          1152  non-null values
testorientation    1152  non-null values
dtypes: float64(3), int64(2)

The cuepos column and the targetpos column both contain integer values of either 1 or 2.

I would like to group this data by congruency between cuepos and targetpos. In other words, I would like to produce two groups, one for rows in which cuepos == targetpos and another group for which cuepos != targetpos.

I can't seem to figure out how I might do this. I looked at using grouping functions, but these seem only to act on a single column... or am I mistaken? Can someone point me in the right direction?

Thanks in advance! Blz

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2 Answers

up vote 2 down vote accepted

Note, if you goal is to do group computations, you can do

df.groupby(df.col1 == df.col2).apply(f)

and the result will be keyed by True/False.

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you can group by multiple columns:

df.groupby(['col1', 'col2']).apply(lambda x: x['col1'] == x['col2'], axis=1)

you can also use a mask:

df[df.col1==df.col2]

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Maybe I'm not quite grasping the groupby().apply() call, but I get the impression that this doesn't do what I'd like. Specifically, doing groupby(['col1', 'col2']) gives me four groups, defined as tuples structured as (col1_value, col2_value). I'd like to have two groups, labelled in such a way as to convey whether or not the value of column 1 is the same as the value of column 2. Does that make sense? Using a mask is my fallback option, at this point =) –  blz Nov 15 '12 at 18:49
    
df.groupby(['col1', 'col2']).apply(lambda x: x['col1'] == x['col2'], axis=1) will groupy col1, col2 and you will have another column with True if col1 equals col2 otherwise False –  locojay Nov 15 '12 at 18:57
    
Yeah that seems like an acceptable solution. I should have thought of that ^^! –  blz Nov 15 '12 at 19:03
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