Unifying Framework
"Unifying frameworks" in various scientific fields aim to consolidate disparate approaches and models into a single, more coherent and efficient system. Current research focuses on developing unified architectures for tasks like object detection, natural language processing, and reinforcement learning, often leveraging techniques such as transformer networks, attention mechanisms, and novel loss functions to improve performance and generalization. These efforts are significant because they streamline complex processes, enhance model interpretability, and potentially lead to more robust and scalable solutions across diverse applications.
Papers
A Systematization of the Wagner Framework: Graph Theory Conjectures and Reinforcement Learning
Flora Angileri, Giulia Lombardi, Andrea Fois, Renato Faraone, Carlo Metta, Michele Salvi, Luigi Amedeo Bianchi, Marco Fantozzi, Silvia Giulia Galfrè, Daniele Pavesi, Maurizio Parton, Francesco Morandin
UIFV: Data Reconstruction Attack in Vertical Federated Learning
Jirui Yang, Peng Chen, Zhihui Lu, Qiang Duan, Yubing Bao
Aligning Models with Their Realization through Model-based Systems Engineering
Lovis Justin Immanuel Zenz, Erik Heiland, Peter Hillmann, Andreas Karcher