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I would like to create a correlation data between columns like in this diagonal correlation matrix.

My data is currently is this format:

enter image description here

And i need to convert it to this format:

enter image description here

How is this possible, merging the categories from T and G into the Sample columns?

Thanks for your help!

Edit:

print(df.dtypes) outputs:

T
int64
Group
object
Sample1
float64
Sample2
int64
Sample3
float64
dtype: object

print(df.index) outputs:

Int64Index([0, 1, 3, 6, 16, 18, 19, ..., 52], dtype='int64')

print(type(df)) outputs:

<class 'pandas.core.frame.DataFrame'>
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  • Have you looked at multi-indexing? – Alex Feb 12 at 16:48
  • Yes, i was thinking about using df.set_index(['T', 'Group']) to iterate over the indexes and creating a new dataset with a new column for each iteration. Is there a better way? – Hmmm Feb 12 at 17:13
1

Assuming that your original dataframe is called df and your columns are T, G and Sample*, the following code prepare a new data frame with the desired format:

list_T = list(df['T'].unique())
list_G = list(df['G'].unique())
list_Samples = list(df.drop(['T', 'G'], axis = 1).columns)

cols = []
data = []
for s in list_Samples:
    for g in list_G:
        for t in list_T:
            cols.append(s + ' T' + str(t) + ' ' + g)
            data.append(list(df[s][(df['T'] == t) & (df['G'] == g)]))

df2 = pd.DataFrame(data = np.array(data).T, columns = cols)

Original dataframe:

enter image description here

Transformed dataframe:

enter image description here

0

It would be easier when you put link to data. I dont want to prescribe your data. Please try with PANDAS - Crosstab.

  • When i apply pd.crosstab(df.Group, df.T, margins=True) i get the error TypeError: 'int' object is not iterable – Hmmm Feb 12 at 17:09
  • First check what type of data you have. print(df.dtypes) and index – Wojciech Moszczyński Feb 12 at 17:29
  • end DataFrame: print(type(df)) – Wojciech Moszczyński Feb 12 at 17:35
  • thank you, i posted the outputs in the thread - what does it tell? – Hmmm Feb 12 at 17:43

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