The author proposes the Binary Gaussian Copula Synthesis (BGCS) as a novel data augmentation method tailored for binary medical datasets to enhance early dialysis prediction in CKD patients.
AdAutomixup proposes an adversarial automatic mixup augmentation approach to generate challenging samples for robust image classification. By optimizing the classifier and mixup sample generator adversarially, it aims to improve generalization performance.
Introducing "phased data augmentation" as a novel technique to enhance training of likelihood-based generative models with limited data.
Proposing DreamDA for diverse and high-quality data synthesis using diffusion models.
Proposing DreamDA framework for diverse image synthesis using diffusion models.