Visual Integration of Data and Model Space in Ensemble Learning
Abstract
Ensembles of classifier models typically deliver superior performance and can outperform single classifier models given a dataset and classification task at hand. However, the gain in performance comes together with the lack in comprehensibility, posing a challenge to understand how each model affects the classification outputs and where the errors come from. We propose a tight visual integration of the data and the model space for exploring and combining classifier models. We introduce a workflow that builds upon the visual integration and enables the effective exploration of classification outputs and models. We then present a use case in which we start with an ensemble automatically selected by a standard ensemble selection algorithm, and show how we can manipulate models and alternative combinations.
Keywords
Cite
@article{arxiv.1710.07322,
title = {Visual Integration of Data and Model Space in Ensemble Learning},
author = {Bruno Schneider and Dominik Jäckle and Florian Stoffel and Alexandra Diehl and Johannes Fuchs and Daniel Keim},
journal= {arXiv preprint arXiv:1710.07322},
year = {2017}
}
Comments
8 pages, 7 pictures