Accurate Model
Research on accurate models focuses on developing and improving machine learning models that achieve high predictive accuracy while addressing various constraints like computational efficiency, data scarcity, and fairness. Current efforts concentrate on optimizing model architectures (e.g., exploring component-level improvements in LLMs, developing efficient quantization techniques for federated learning, and designing lightweight models for edge devices), improving training methodologies (e.g., leveraging self-supervised learning and incorporating external knowledge), and mitigating issues like data leakage and model explainability. These advancements are crucial for deploying reliable and trustworthy AI systems across diverse applications, from autonomous driving to healthcare and beyond.
Papers
Certain and Approximately Certain Models for Statistical Learning
Cheng Zhen, Nischal Aryal, Arash Termehchy, Alireza Aghasi, Amandeep Singh Chabada
The Seeker's Dilemma: Realistic Formulation and Benchmarking for Hardware Trojan Detection
Amin Sarihi, Ahmad Patooghy, Abdel-Hameed A. Badawy, Peter Jamieson