Feb. 9, 2024, 5:42 a.m. | Reijo Jaakkola Tomi Janhunen Antti Kuusisto Masood Feyzbakhsh Rankooh Miikka Vilander

cs.LG updates on arXiv.org arxiv.org

We introduce a method for computing immediately human interpretable yet accurate classifiers from tabular data. The classifiers obtained are short DNF-formulas, computed via first discretizing the original data to Boolean form and then using feature selection coupled with a very fast algorithm for producing the best possible Boolean classifier for the setting. We demonstrate the approach via 14 experiments, obtaining results with accuracies mainly similar to ones obtained via random forests, XGBoost, and existing results for the same datasets in …

algorithm classifier classifiers computing cs.ai cs.lg cs.lo data feature feature selection form human tabular tabular data via

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