2020
DOI: 10.1007/978-3-030-61527-7_34
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Multi-directional Rule Set Learning

Abstract: A rule set is a type of classifier that, given attributes X, predicts a target Y. Its main advantage over other types of classifiers is its simplicity and interpretability. A practical challenge is that the end user of a rule set does not always know in advance which target will need to be predicted. One way to deal with this is to learn a multi-directional rule set, which can predict any attribute from all others. An individual rule in such a multi-directional rule set can have multiple targets in its head, a… Show more

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