Multi-classifiers of Small Treewidth
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Publication date
2015
Editors
Destercke, Sebastien
Denoeux, Thierry
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Abstract
Multi-dimensional Bayesian network classifiers are becoming quite popular for multi-label classification. These models have the advantage of a high expressive power, but may induce a prohibitively high runtime of classification. We argue that the high runtime burden originates from their large treewidth. Thus motivated, we present an algorithm for learning multi-classifiers of small treewidth. Experimental results show that these models have a small runtime of classification, without loosing accuracy compared to unconstrained multi-classifiers.
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Pastink, A J & van der Gaag, L C 2015, Multi-classifiers of Small Treewidth. in S Destercke & T Denoeux (eds), ECSQARU 2015: 13th European Conference on Symbolic and Quantitative Approaches to Reasoning with Uncertainty. vol. 9161, Springer, pp. 199-209. https://doi.org/10.1007/978-3-319-20807-7