A Fusion of Stacking with Dynamic Integration
Abstract
In this paper we present a novel method that fuses the ensemble meta-techniques of Stack-ing and Dynamic Integration (DI) for regres-sion problems, without adding any major computational overhead. The intention of the technique is to benefit from the varying per-formance of Stacking and DI for different data sets, in order to provide a more robust technique. We detail an empirical analysis of the technique referred to as weighted Meta-Combiner (wMetaComb) and compare its per-formance to Stacking and the DI technique of Dynamic Weighting with Selection. The em-pirical analysis consisted of four sets of ex-periments where each experiment recorded the cross-fold evaluation of each technique for a large number of diverse data sets, where each base model is created using random fea-ture selection and the same base learning al-gorithm. Each experiment differed in terms of the latter base learning algorithm used. We demonstrate that for each evaluation, wMeta-Comb was able to outperform DI and Stack-ing for each experiment and as such fuses the two underlying mechanisms successfully
Cite
Text
Rooney and Patterson. "A Fusion of Stacking with Dynamic Integration." International Joint Conference on Artificial Intelligence, 2007.Markdown
[Rooney and Patterson. "A Fusion of Stacking with Dynamic Integration." International Joint Conference on Artificial Intelligence, 2007.](https://mlanthology.org/ijcai/2007/rooney2007ijcai-fusion/)BibTeX
@inproceedings{rooney2007ijcai-fusion,
title = {{A Fusion of Stacking with Dynamic Integration}},
author = {Rooney, Niall and Patterson, David W.},
booktitle = {International Joint Conference on Artificial Intelligence},
year = {2007},
pages = {2844-2849},
url = {https://mlanthology.org/ijcai/2007/rooney2007ijcai-fusion/}
}