Hi, Thomas, the VotingClassifier can combine different models per majority voting amongst their predictions. Unfortunately, it refits the classifiers though (after cloning them). I think we implemented it this way to make it compatible to GridSearch and so forth. However, I have a version of the estimator that you can initialize with “refit=False” to avoid refitting if it helps. http://rasbt.github.io/mlxtend/user_guide/classifier/EnsembleVoteClassifier/... Best, Sebastian
On Jan 7, 2017, at 11:15 AM, Thomas Evangelidis <tevang3@gmail.com> wrote:
Greetings,
I have trained many MLPRegressors using different random_state value and estimated the R^2 using cross-validation. Now I want to combine the top 10% of them in how to get more accurate predictions. Is there a meta-estimator that can get as input a few precomputed MLPRegressors and give consensus predictions? Can the BaggingRegressor do this job using MLPRegressors as input?
Thanks in advance for any hint. Thomas
-- ====================================================================== Thomas Evangelidis Research Specialist CEITEC - Central European Institute of Technology Masaryk University Kamenice 5/A35/1S081, 62500 Brno, Czech Republic
email: tevang@pharm.uoa.gr tevang3@gmail.com
website: https://sites.google.com/site/thomasevangelidishomepage/
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