Knowledge-Guided Machine Learning: Illustrating the use of Explainable Boosting Machines to Identify Overshooting Tops in Satellite Imagery

This paper demonstrates how to develop a fully interpretable machine learning model for detecting overshooting tops in satellite imagery by using Explainable Boosting Machines combined with knowledge-guided feature extraction and human-in-the-loop refinement to prioritize transparency and domain expertise over peak accuracy.

Nathan Mitchell, Lander Ver Hoef, Imme Ebert-Uphoff + 4 more2026-03-02🤖 cs.LG

Draw-In-Mind: Rebalancing Designer-Painter Roles in Unified Multimodal Models Benefits Image Editing

The paper introduces Draw-In-Mind (DIM), a unified multimodal model that rebalances designer-painter roles by explicitly assigning design responsibilities to the understanding module through a specialized dataset of long-context pairs and chain-of-thought blueprints, achieving state-of-the-art image editing performance despite its compact parameter scale.

Ziyun Zeng, David Junhao Zhang, Wei Li + 1 more2026-03-02🤖 cs.AI