2023
DOI: 10.1109/access.2023.3268866
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BELLATREX: Building Explanations Through a LocaLly AccuraTe Rule EXtractor

Abstract: Random forests are machine learning methods characterised by high performance and robustness to overfitting. However, since multiple learners are combined, they are not as interpretable as a single decision tree. In this work we propose a novel method that is Building Explanations through a LocalLy AccuraTe Rule EXtractor (Bellatrex), which is able to explain the forest prediction for a given test instance with only a few diverse rules. Starting from the decision trees generated by a random forest, our method … Show more

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Cited by 2 publications
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