Early Warning of Intraoperative Adverse Events via Transformer-Driven Multi-Label Learning

This paper introduces IAENet, a novel Transformer-based multi-label learning framework that leverages a new Multi-label Adverse Events dataset (MuAE), an improved TAFiLM module for robust data fusion, and a Label-Constrained Reweighting Loss to effectively predict multiple intraoperative adverse events with significantly higher accuracy than existing baselines.

Xueyao Wang, Xiuding Cai, Honglin Shang + 2 more2026-03-06🤖 cs.AI

A Behaviour-Aware Federated Forecasting Framework for Distributed Stand-Alone Wind Turbines

This paper proposes a privacy-preserving, two-stage federated learning framework that clusters distributed wind turbines based on long-term behavioral statistics using Double Roulette Selection and recursive Auto-split refinement to train localized LSTM models, achieving competitive short-term forecasting accuracy that outperforms geographic partitioning while maintaining data locality.

Bowen Li, Xiufeng Liu, Maria Sinziiana Astefanoaei2026-03-06🤖 cs.LG