A Mixtures-of-Experts Framework for Multi-Label Classification
We develop a novel probabilistic approach for multi-label classification that is based on the mixtures-of-experts architecture combined with recently introduced conditional tree-structured Bayesian networks. Our approach captures different input-output relations from multi-label data using the effic...
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Zusammenfassung: | We develop a novel probabilistic approach for multi-label classification that
is based on the mixtures-of-experts architecture combined with recently
introduced conditional tree-structured Bayesian networks. Our approach captures
different input-output relations from multi-label data using the efficient
tree-structured classifiers, while the mixtures-of-experts architecture aims to
compensate for the tree-structured restrictions and build a more accurate
model. We develop and present algorithms for learning the model from data and
for performing multi-label predictions on future data instances. Experiments on
multiple benchmark datasets demonstrate that our approach achieves highly
competitive results and outperforms the existing state-of-the-art multi-label
classification methods. |
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DOI: | 10.48550/arxiv.1409.4698 |