Publication: Stacked ensemble modeling with personalized weightsbased on clustering
Abstract
Ensemble modeling improves classification model performance and has been widely used at predictive
modeling. Among ensemble methods, the stacking technique performs a weighted average over the
predictions of individual base models, where each model has a fixed weight. This paper proposes a novel
approach to the weight assignment where each data point has different set of weights for base models at
stacking. This is achieved by employing first clustering technique K-Means and then training the combiner
models for each cluster. To measure the improvements at generalization accuracy, the proposed algorithm
has been tested at 22 benchmark datasets while the number of clusters varied from 2 to 12 for each. The
algorithm delivered improved performance up to 41% of datasets.
Description
Keywords
Citation
ÖZÇELİK M. H., BULKAN S., \"STACKED ENSEMBLE MODELING WITH PERSONALIZED WEIGHTS
BASED ON CLUSTERING\", YAEM 2022, Denizli, Türkiye, 26 - 28 Ekim 2022, ss.154
