Improvements of Random Search for Hyperparameter Optimization

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Moritz Bleibtreu
Moritz Bleibtreu am 19 Mai 2016
Beantwortet: Don Mathis am 8 Jan. 2017
Hello
Random search is one possibility for hyperparameter optimization in machine learning. I have applied random search to search for the best hyperparameters of a SVM classifier with a RBF kernel. Additional to the continuous Cost and gamma parameter, I have one discrete parameter and also an equality constraint over some parameters.
Now, I would like to develop random search further, e.g. through adaptive random search. That means for example adaptation of the search direction or of the search range.
Does somebody have an idea how this can be done or could reference to some existing work on this? Other ideas for improving random search are also welcome.

Antworten (1)

Don Mathis
Don Mathis am 8 Jan. 2017
You might have a look at the bayesopt function in the R2016b release.

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