Rethinking the Diffusion Models for Missing Data Imputation: A Gradient Flow Perspective 2
–Neural Information Processing Systems
Diffusion models have demonstrated competitive performance in missing data imputation (MDI) task. However, directly applying diffusion models to MDI produces suboptimal performance due to two primary defects. First, the sample diversity promoted by diffusion models hinders the accurate inference of missing values. Second, data masking reduces observable indices for model training, obstructing imputation performance. To address these challenges, we introduce Negative Entropy-regularized Wasserstein gradient flow for Imputation (NewImp), enhancing diffusion models for MDI from a gradient flow perspective. To handle the first defect, we incorporate a negative entropy regularization term into the cost functional to suppress diversity and improve accuracy. To handle the second defect, we demonstrate that the imputation procedure of NewImp, induced by the conditional distribution-related cost functional, can equivalently be replaced by that induced by the joint distribution, thereby naturally eliminating the need for data masking.
Neural Information Processing Systems
Jun-1-2025, 19:17:37 GMT
- Country:
- Europe > United Kingdom > England (0.14)
- Genre:
- Research Report
- Experimental Study (1.00)
- New Finding (1.00)
- Research Report
- Industry:
- Energy > Oil & Gas (0.46)
- Health & Medicine (0.67)
- Technology: