Hi @Matheus_Plana,
May I ask why you (or your client) choose a Neural Network model ?
There are many other models available, and depending on your dataset size, representativeness/homogeneity and quality, there may be other (Machine Learning or others) models more adapted (in terms of performance & complexity in relation with your objective). See other topics about this question :
Model Screening: Neural network / K-fold crossvalidation
help with model comparsion: DOE vs ANN boosted
...
In JMP, you can build Neural Networks, but most of the options require JMP Pro, so you will only investigate a small subset of all possible NN models, so I wonder if it is very relevant to try optimizing a NN on this very narrow hyperparameters space : Launch the Neural Platform
I guess that you could automatize the testing of various NN models with JMP only options (only TanH activation function, one layer only, ...), but it would require some scripting to automatize these steps :
- Define the min and max levels of the hyperparameters available in JMP-only options,
- Create a Space-Filling design with the hyperparameters defined as factors,
- Fit all NN models from this Space-Filling design,
- Agregate metrics performances to compare models.
Hope this answer will help you,
Victor GUILLER
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)