Hybrid U-Net augmented with Clay GFM context via two-stage LoRA reaches 64.5% test F1 on Landslide4Sense, beating both standalone Clay (55.2%) and plain U-Net (59.9%).
The Lov\'asz Hinge: A Novel Convex Surrogate for Submodular Losses
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Learning with non-modular losses is an important problem when sets of predictions are made simultaneously. The main tools for constructing convex surrogate loss functions for set prediction are margin rescaling and slack rescaling. In this work, we show that these strategies lead to tight convex surrogates iff the underlying loss function is increasing in the number of incorrect predictions. However, gradient or cutting-plane computation for these functions is NP-hard for non-supermodular loss functions. We propose instead a novel surrogate loss function for submodular losses, the Lov\'asz hinge, which leads to O(p log p) complexity with O(p) oracle accesses to the loss function to compute a gradient or cutting-plane. We prove that the Lov\'asz hinge is convex and yields an extension. As a result, we have developed the first tractable convex surrogates in the literature for submodular losses. We demonstrate the utility of this novel convex surrogate through several set prediction tasks, including on the PASCAL VOC and Microsoft COCO datasets.
fields
cs.CV 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
Clay-CNN Hybrids: Leveraging Geospatial Foundation Models as Auxiliary Context for Landslide Detection
Hybrid U-Net augmented with Clay GFM context via two-stage LoRA reaches 64.5% test F1 on Landslide4Sense, beating both standalone Clay (55.2%) and plain U-Net (59.9%).