CART-based Synthetic Tabular Data Generation for Imbalanced Regression
- URL: http://arxiv.org/abs/2506.02811v1
- Date: Tue, 03 Jun 2025 12:42:20 GMT
- Title: CART-based Synthetic Tabular Data Generation for Imbalanced Regression
- Authors: António Pedro Pinheiro, Rita P. Ribeiro,
- Abstract summary: We propose adapting an existing CART-based synthetic data generation method, tailoring it for imbalanced regression.<n>The new method integrates relevance and density-based mechanisms to guide sampling in sparse regions of the target space.<n>Our experimental study focuses on the prediction of extreme target values across benchmark datasets.
- Score: 1.342834401139078
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Handling imbalanced target distributions in regression tasks remains a significant challenge in tabular data settings where underrepresented regions can hinder model performance. Among data-level solutions, some proposals, such as random sampling and SMOTE-based approaches, propose adapting classification techniques to regression tasks. However, these methods typically rely on crisp, artificial thresholds over the target variable, a limitation inherited from classification settings that can introduce arbitrariness, often leading to non-intuitive and potentially misleading problem formulations. While recent generative models, such as GANs and VAEs, provide flexible sample synthesis, they come with high computational costs and limited interpretability. In this study, we propose adapting an existing CART-based synthetic data generation method, tailoring it for imbalanced regression. The new method integrates relevance and density-based mechanisms to guide sampling in sparse regions of the target space and employs a threshold-free, feature-driven generation process. Our experimental study focuses on the prediction of extreme target values across benchmark datasets. The results indicate that the proposed method is competitive with other resampling and generative strategies in terms of performance, while offering faster execution and greater transparency. These results highlight the method's potential as a transparent, scalable data-level strategy for improving regression models in imbalanced domains.
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