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I have a data set where pictures were presented 3 times and measurements were taken for each presentation. Prospectively I would like to normalize the values for each picture (based on the 3 repetitions - so 3 numbers) and run an ANOVA on the categories: first presentation, second presentation, third presentation (for all pictures). Before I get to that, however, I have to reorganize my data so that I can easily access data - based on the picture name AND the number of the repetition.

I would like to convert a pandas dataframe which looks like this:

viola.jpg          0.61  1.968234      1
vlasta.jpg         0.79  1.836025      2
zelmira.jpg        0.76  1.955471      3
viola.jpg          0.71  1.968234      4
vlasta.jpg         0.89  1.836025      5
zelmira.jpg        0.76  1.955471      6
viola.jpg          0.31  1.968234      7
vlasta.jpg         0.79  1.836025      8
zelmira.jpg        0.26  1.955471      9

To one which looks like this:

viola.jpg   1   0.61    1.968234        1
            2   0.71    1.968234        4
            3   0.31    1.968234        7
vlasta.jpg  1   0.79    1.836025        2
            2   0.89    1.836025        5
            3   0.79    1.836025        8
zelmira.jpg 1   0.76    1.955471        3
            2   0.76    1.955471        6
            3   0.26    1.955471        9

I have tried using df.groupby(), df.pivot, and df.stack() in various combinations, but apparently they don't even vaguely do something like what I am looking for - any ideas?

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1 Answer 1

up vote 2 down vote accepted

If you have a DataFrame df, you can set your image name and measurement id fields as an index then sort. That will order the data how you want.

df2 = df.set_index("pic_name", "meas_id").sort()

groupby and pivot are good for performing aggregations over groups of data or when you have something specific you need to do to individual groups. stack and unstack help with reshaping your data, but move indexes to cols and vice versa.

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wow - that is awesome and simple, thank you :) Could you also tell me how I can get the 1-3 numbering (I will need this to select my categories for the ANOVA) –  TheChymera Apr 9 '13 at 16:22
    
@TheChymera, Do you have exactly 3 measurements for every image? –  bdiamante Apr 9 '13 at 16:41
    
yes. fillupcharactercount –  TheChymera Apr 9 '13 at 17:17
    
You could try something like, meas_id = [1,2,3] * (len(df2.index) / 3) and then do df3 = df2.reset_index().set_index(["pic_name", meas_id]). I think that should work as long as there are no missing measurements. –  bdiamante Apr 9 '13 at 17:29

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