How to use Bayesian Optimization?

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Amy Xu
Amy Xu el 19 de Abr. de 2017
Comentada: Don Mathis el 27 de Abr. de 2017
I'm trying to run the following Mathworks example with my own X and Y:
"Tune Random Forest Using Quantile Error and Bayesian Optimization"
But, I'm getting the following error:
Undefined function or variable 'Y'.
I have attached the modified code (place both files in one folder on your PC drive). Can anyone help?

Respuestas (1)

Don Mathis
Don Mathis el 20 de Abr. de 2017
You need to pass Y into oobErrRF. Change its first line to
function oobErr = oobErrRF(params,X,Y)
And change the call on line 66 of your main file to
results = bayesopt(@(params)oobErrRF_editted(params,X,Y),hyperparametersRF,...
That fixes your error. But after that you get a new error, because inside oobErrRF you're calling oobQuantileError on a classification random forest, while it's only defined for regression random forests. Are you trying to do classification or regression?
  2 comentarios
Amy Xu
Amy Xu el 27 de Abr. de 2017
Thanks @Don.
In fact, I am trying to do classification. Can we use Bayesian Optimization for classification?
Don Mathis
Don Mathis el 27 de Abr. de 2017
Yes you can. I edited your code to call 'oobError' instead of 'oobQuantileError', and took the mean over all trees. I also told your final 'Mdl' to train with Method 'classification' and turned on 'OOBPredictions' so you can see the performance of the final model. I also told 'bayesopt' to use Verbose=1. I've attached the edited files.

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