Alexander Gracian
2018-May-03 07:03 UTC
[R] GA/SWARM Hyperparameter (HP) Optimisation for Classification based Machine Learning
Hi, I believe that Caret uses a ?grid-serach approach. I was wondering if: 1 There are more efficient implementations for HP tuning for classification algos?(eg XGboost, CatBoost, SVM, RF etc),?using say?GM/SWARM approaches, akin to Google's approach AutoML for Image related Net problems? 2 This one is most probably wishful thinking, but is anyone looking at GM/SWARM at HP tuning across models (ensemble models). eg?the best set of HP for combined XGBoost + SVM, which accounts for the correlation/interaction of the prediction assumptions. BestAlex [[alternative HTML version deleted]]
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