Grosskreutz, HenrikHenrikGrosskreutz2022-03-102022-03-102008https://publica.fraunhofer.de/handle/publica/358646Subgroup discovery is a task from the area of Knowledge Discovery in Databases (KDD) that aims at finding interesting subgroups of a population. One problem with subgroup discovery algorithms is that many of them return a very high number of subgroups, including many redundant ones. In this paper, we present an approach to iteratively build up a set of subgroups for a numerical target attribute. The result is a additive representation of the patterns in the dataset, which can also be used as a regression model. The iterative scheme presented is similar to Transformation-Based Regression (TBR), an algorithm from the area of rule-based regression. While this is work in progress, first experiments show that the resulting sets of subgroups have a predictive accuracy that is similar to that of models generated by TBR, while the models are much more compact and arguably easier to interpret.en005Cascaded subgroups discovery with an application to regressionconference paper