Learning preferences for large scale multi-label problems

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Abstract

Despite that the majority of machine learning approaches aim to solve binary classification problems, several real-world applications require specialized algorithms able to handle many different classes, as in the case of single-label multi-class and multi-label classification problems. The Label Ranking framework is a generalization of the above mentioned settings, which aims to map instances from the input space to a total order over the set of possible labels. However, generally these algorithms are more complex than binary ones, and their application on large-scale datasets could be untractable. The main contribution of this work is the proposal of a novel general on-line preference-based label ranking framework. The proposed framework is able to solve binary, multi-class, multi-label and ranking problems. A comparison with other baselines has been performed, showing effectiveness and efficiency in a real-world large-scale multi-label task.

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APA

Lauriola, I., Polato, M., Lavelli, A., Rinaldi, F., & Aiolli, F. (2018). Learning preferences for large scale multi-label problems. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 11139 LNCS, pp. 546–555). Springer Verlag. https://doi.org/10.1007/978-3-030-01418-6_54

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