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I have a Pandas DataFrame and I want to find all rows where the i'th column values are 10 times greater than other columns. Here is an example of my DataFrame:

Sample data

For example, looking at column i=0, row B (0.344) its is 10x greater than values in the same row but in other columns (0.001, 0, 0.009, 0). So I would like:

my_list_0=[False,True,False,False,False,False,False,False,False,False,False]

The number of columns might change hence I don't want a solution like:

#This is good only for a DataFrame with 4 columns.
my_list_i = data.loc[(data.iloc[:,i]>10*data.iloc[:,(i+1)%num_cols]) &
                     (data.iloc[:,i]>10*data.iloc[:,(i+2)%num_cols]) &
                     (data.iloc[:,i]>10*data.iloc[:,(i+3)%num_cols])]

Any idea? thanks.

1 Answer 1

1

Given the df:

df = pd.DataFrame({'cell1':[0.006209, 0.344955, 0.004521, 0, 0.018931, 0.439725, 0.013195, 0.009045, 0, 0.02614, 0],
              'cell2':[0.048043, 0.001077, 0,0.010393, 0.031546, 0.287264, 0.016732, 0.030291, 0.016236, 0.310639,0], 
              'cell3':[0,0,0.020238, 0, 0.03811, 0.579348, 0.005906, 0,0,0.068352, 0.030165],
              'cell4':[0.016139, 0.009359, 0,0,0.025449, 0.47779, 0, 0.01282, 0.005107, 0.004846, 0],
              'cell5': [0,0,0,0.012075, 0.031668, 0.520258, 0,0,0,2.728218, 0.013418]})
i = 0

You can use

(10 * df.drop(df.columns[i], axis=1)).lt(df.iloc[:,i], axis=0).all(1)

To get

0     False
1      True
2     False
3     False
4     False
5     False
6     False
7     False
8     False
9     False
10    False
dtype: bool

for any number of columns. This drops column i, multiplies the remaining df by 10, and checks row-wise for being less than i, then returns True only if all values in the row are True. So it returns a vector of True for each row where this obtains and False for others.

If you want to give an arbitrary threshold, you can sum the Trues and divide by the number of columns - 1, then compare with your threshold:

thresh = 0.5  # or whatever you want
(10 * df.drop(df.columns[i], axis=1)).lt(df.iloc[:,i], axis=0).sum(1) / (df.shape[1] - 1) > thresh

0     False
1      True
2      True
3     False
4     False
5     False
6     False
7     False
8     False
9     False
10    False
dtype: bool
7
  • I don't see how is it going to work (check column i with each and every other column).
    – Eran
    Feb 14, 2019 at 20:50
  • sum(1) sums every row. Why don't you check it and see? Feb 15, 2019 at 4:41
  • I did check it, hence asking. The condition translates to df.iloc[:,i] > 10*sum_of_row. This doesn't check that df.iloc[:,i] is greater element wise. Do I miss something?
    – Eran
    Feb 15, 2019 at 14:42
  • Edited, in future please copy-paste code rather than image as it saves people having to type it up again from scratch in order to reproduce. Feb 17, 2019 at 6:30
  • By the way - is there a Pandas operator "between" .any() and .all()? (i.e. True when some percentage of columns satisfy the condition). I guess I can do it with df.sample(frac=0.5,axis=1) after df.drop.
    – Eran
    Feb 17, 2019 at 11:59

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