Treffer: Empirical copula-based data augmentation for mixed-type datasets: a robust approach for synthetic data generation.
Weitere Informationen
Data augmentation is a critical technique for enhancing model performance in scenarios with limited, sparse, or imbalanced datasets. While existing methods often focus on homogeneous data types (e.g., continuous-only or categorical-only), real-world datasets frequently contain mixed data types (continuous, integer, and categorical), posing significant challenges for synthetic data generation. This article introduces a novel empirical copula-based framework for generating synthetic data that preserves both marginal and joint probability distributions and dependencies of mixed-type features. Our method addresses missing values, handles heterogeneous data through type-specific transformations, and introduces controlled noise to enhance diversity while maintaining statistical fidelity. We demonstrate the efficacy of this approach using synthetic and experimental benchmark datasets such as the Census Income and the Wisconsin Diagnostic Breast Cancer (WDBC) dataset, demonstrating its ability to generate realistic synthetic samples that retain the statistical properties of the original data. The proposed method is implemented in an open-source Python class, ensuring reproducibility and scalability. [ABSTRACT FROM AUTHOR]
Copyright of PeerJ Computer Science is the property of PeerJ Inc. and its content may not be copied or emailed to multiple sites without the copyright holder's express written permission. Additionally, content may not be used with any artificial intelligence tools or machine learning technologies. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)