Let's say I have a data frame (df). For this example, I will just take a sample that looks like this:

X1  Binned_X1   Dependent   WOE_X1
-236    [-316,67)   1   -0.154412769
-236    [-316,67)   0   -0.154412769
-236    [-316,67)   0   -0.154412769
-236    [-316,67)   0   -0.154412769
-236    [-316,67)   0   -0.154412769
-236    [-316,67)   0   -0.154412769
-236    [-316,67)   0   -0.154412769
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   1   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   1   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   1   -0.184265732
320     [244,420)   0   -0.184265732
320     [244,420)   1   -0.184265732
320     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   1   -0.184265732
244     [244,420)   1   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   1   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   1   -0.184265732
244     [244,420)   1   -0.184265732
244     [244,420)   1   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   1   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   0   -0.184265732
244     [244,420)   1   -0.184265732
244     [244,420)   1   -0.184265732
244     [244,420)   0   -0.184265732

for the calculation of the Bins, I used cutr::smart_cut (in case you wanted to know) and for the calculation of the WOE, I used InformationValue::WOE. Now, what I want to do, is to merge the bins when the difference between the values of the WOEs is less than certain number, for this example let's say 0.2

So, in this case (-0.1544-(-0.1842)) = 0.0298, so I would like the column Binned_X1 to group both values so it would be something like [-316,67),[244,67). And after one bin is merged, calculate again the WOE.

In case you are wondering how does the WOE is calculated, the formula is: ln((Relative frecuency of Goods)/(Relative frecuency of Bads)). Being "Goods" every 1 in the column Dependent, and "Bads" every 0.

FYI, in df we would have a table like this:

           [-316,67)    [244,420)
Local Goods   18          22
Local Bads    54          68
Total Goods   212         212
Total bads    545         545
WOE      -0.154412769   -0.184265732

And in the output we would have something like this table

             [-316,67),[244,420)
Local Goods          40
Local Bads           122
Total Goods          212
Total bads           545
WOE             -0.170942071

Can someone help me?

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Browse other questions tagged or ask your own question.