Diverging Flows: Detecting Extrapolations in Conditional Generation
Tsakonas, Constantinos, Ivaldi, Serena, Mouret, Jean-Baptiste
The ability of Flow Matching (FM) to model complex conditional distributions has established it as the state-of-the-art for prediction tasks (e.g., robotics, weather forecasting). However, deployment in safety-critical settings is hindered by a critical extrapolation hazard: driven by smoothness biases, flow models yield plausible outputs even for off-manifold conditions, resulting in silent failures indistinguishable from valid predictions. In this work, we introduce Diverging Flows, a novel approach that enables a single model to simultaneously perform conditional generation and native extrapolation detection by structurally enforcing inefficient transport for off-manifold inputs. We evaluate our method on synthetic manifolds, cross-domain style transfer, and weather temperature forecasting, demonstrating that it achieves effective detection of extrapolations without compromising predictive fidelity or inference latency. These results establish Diverging Flows as a robust solution for trustworthy flow models, paving the way for reliable deployment in domains such as medicine, robotics, and climate science.
Feb-16-2026
- Country:
- Europe > France (0.04)
- North America > United States
- California > San Francisco County > San Francisco (0.14)
- South America > Argentina
- Patagonia > Río Negro Province > Viedma (0.04)
- Genre:
- Research Report > New Finding (0.46)
- Technology:
- Information Technology
- Artificial Intelligence
- Machine Learning
- Neural Networks > Deep Learning (1.00)
- Performance Analysis > Accuracy (1.00)
- Representation & Reasoning (1.00)
- Robots (1.00)
- Machine Learning
- Data Science > Data Mining (1.00)
- Artificial Intelligence
- Information Technology