Hi JMP Community,
I'm struggling with the proper implementation of the Transform option in the Fit Model > Standard Least Square platform.
In order to better understand the issue, I created a mock data set where the Response is continuous; and the Model effects are: 1) Biomarker levels (continuous), 2) Treatment (2 categories), and 3) their interaction. The Response in the ACTIVE treatment is dependent on the Biomarker level following a logistic distribution
Here is a Graph Builder depiction of the response by biomarker levels:
If I run the Standard Least Square model with Treatment, Biomarker, and Interaction with the Response response transformed according to a Logistic relationship (Transform > Logistic on Response), I get an odd result:
1) Predicted by Actual (note the poor fit for most of the ACTIVE group [RED])
![Response x Biomarker Logistic FIT MODEL LOGISTIC transformation.png Response x Biomarker Logistic FIT MODEL LOGISTIC transformation.png](https://community.jmp.com/t5/image/serverpage/image-id/12589iB157C5E58BAB55EA/image-size/medium?v=v2&px=400)
The residuals from this model are skewed as shown in the next 2 pictures:
2) Residuals plot
![Model Fit Residual with Logistic Transformation.png Model Fit Residual with Logistic Transformation.png](https://community.jmp.com/t5/image/serverpage/image-id/12590i785922D546889C7A/image-size/medium?v=v2&px=400)
3) Residuals distribution
![Distrib Resiudal with LOGISTIC Transformation.png Distrib Resiudal with LOGISTIC Transformation.png](https://community.jmp.com/t5/image/serverpage/image-id/12591i85267C7D2356F96F/image-size/medium?v=v2&px=400)
Clearly, I'm doing something wrong so please, help me figure out this apparently simple option.
Thank you for your help.
TS
Thierry R. Sornasse