1

I have:

df = pd.DataFrame({"A": [[55218],[55218],[55218],[55222]], "B": [[0],[0],[2],[1]]})

I want count every 0, 1 or 2 for 55218 in "A" and give the relative frequency back

My expected output is:

df_new = pd.DataFrame({"A": [[55218],[55218],[55218],[55222]],"B": [[0], [0], [2], [1]],"Count": [[2], [2], [1], [1]], "rel_frequ": [[0.67], [0.67], [0.33], [1]] })
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  • 1
    I think you need df['count'] = df.groupby(['A','B'])['A'].transform('size') – jezrael Oct 23 '20 at 10:19
  • How working solution? – jezrael Oct 23 '20 at 10:32
  • i think it works, thanks – Mars Oct 23 '20 at 10:33
1

Use DataFrame.transform and then divide column by mapped frequencies of A by Series.value_counts and Series.map:

df['Count'] = df.groupby(['A','B'])['A'].transform('size')
df['rel_frequ'] = df['Count'].div(df['A'].map(df['A'].value_counts()))
print (df)
       A  B  Count  rel_frequ
0  55218  0      2   0.666667
1  55218  0      2   0.666667
2  55218  2      1   0.333333
3  55222  1      1   1.000000

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