2021
DOI: 10.48550/arxiv.2110.07843
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FOLD-R++: A Scalable Toolset for Automated Inductive Learning of Default Theories from Mixed Data

Abstract: FOLD-R is an automated inductive learning algorithm for learning default rules with exceptions for mixed (numerical and categorical) data. It generates an (explainable) answer set programming (ASP) rule set for classification tasks. We present an improved FOLD-R algorithm, called FOLD-R++, that significantly increases the efficiency and scalability of FOLD-R. FOLD-R++ improves upon FOLD-R without compromising or losing information in the input training data during the encoding or feature selection phase. The F… Show more

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