EcoFair: Trustworthy and Energy-Aware Routing for Privacy-Preserving Vertically Partitioned Medical Inference
arXiv cs.LG / 3/30/2026
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Key Points
- EcoFair is a privacy-preserving, vertically partitioned medical inference framework that keeps raw dermatology image and tabular data local while transmitting modality-specific embeddings for server-side multimodal fusion.
- It reduces edge energy use via lightweight-first selective routing that activates a heavier image encoder only when local uncertainty or clinical-risk signals indicate it is needed.
- The routing policy combines predictive uncertainty, a “safe–danger” probability gap, and a tabular neurosymbolic risk score using patient age and lesion localisation.
- Experiments on three dermatology benchmarks show substantial edge-side energy reductions with classification performance staying competitive, and selective routing can better handle subgroup-sensitive malignant cases without changing the global training objective.
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