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I am building a logistic regressin model for probability of take-up for a lending product. I have a number of continuous variables. In the past, I have always used EITHER weight-of-evidence transformations OR raw variabels to build such models.

My question is — can one use BOTH WoE and raw values in the same model? I.e. use WoE for variables $x_1,\dots, x_N$ and raw values for $x_{N+1},\dots x_M$?

The model fit looks reasonable, so I am unsure if this is correct.

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  • $\begingroup$ Can you clarify what you mean by "weight of evidence" variables? Are you asking about transforming only some variables? $\endgroup$ Commented Apr 25, 2015 at 14:06
  • $\begingroup$ thanks for getting back. By "weight of evidence" I mean replacing the raw values of a predictor with the weight-of-evidence value corresponding to it. E.g. if building a model to predict good/bad (credit risk scorecard) using age and income, one can either use the actual age and income values, or the WoE values associated with them. My quesiton is, can one use a mixture of both? $\endgroup$
    – user74579
    Commented Apr 26, 2015 at 9:29
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    $\begingroup$ @danilo276 If you use the same account as you posted from, you can comment in your own posts. Please see about merging your two accounts. $\endgroup$
    – Glen_b
    Commented Apr 26, 2015 at 11:53
  • $\begingroup$ Does this answer your question? Including both transformed and original data (untransformed) in a multivariable linear regression. $\endgroup$ Commented Apr 23, 2020 at 5:17
  • $\begingroup$ @gung: This is probably what is meant by weight-of-evidence stats.stackexchange.com/questions/462052/… $\endgroup$ Commented Apr 24, 2020 at 13:16

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Weight of evidence (WoE) is really just a specific data transformation, so the same question can be asked for other data transformations. And it has been asked & answered already: Including both transformed and original data (untransformed) in a multivariable linear regression.

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