Decision functions for chain classifiers based on Bayesian networks for multi-label classification |
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Affiliation: | Dept. of Artificial Intelligence, Universidad Politécnica de Madrid, Campus de Montegancedo, Madrid, Spain |
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Abstract: | Multi-label classification problems require each instance to be assigned a subset of a defined set of labels. This problem is equivalent to finding a multi-valued decision function that predicts a vector of binary classes. In this paper we study the decision boundaries of two widely used approaches for building multi-label classifiers, when Bayesian network-augmented naive Bayes classifiers are used as base models: Binary relevance method and chain classifiers. In particular extending previous single-label results to multi-label chain classifiers, we find polynomial expressions for the multi-valued decision functions associated with these methods. We prove upper boundings on the expressive power of both methods and we prove that chain classifiers provide a more expressive model than the binary relevance method. |
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Keywords: | Bayesian network classifier Multi-label classification Expressive power Chain classifier Binary relevance Decision functions |
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