Novel Training
Novel training methods in machine learning aim to improve the efficiency, robustness, and generalization capabilities of various models, addressing limitations in existing training paradigms. Current research focuses on developing innovative training objectives and architectures, such as incorporating lookahead planning, twin network augmentation, and multi-objective optimization, to enhance performance across diverse tasks including code generation, spiking neural networks, and multimodal classification. These advancements are significant because they lead to more efficient and effective models, reducing computational costs and improving accuracy and robustness, with implications for various applications ranging from autonomous driving to healthcare.
Papers
A Unique Training Strategy to Enhance Language Models Capabilities for Health Mention Detection from Social Media Content
Pervaiz Iqbal Khan, Muhammad Nabeel Asim, Andreas Dengel, Sheraz Ahmed
Blacksmith: Fast Adversarial Training of Vision Transformers via a Mixture of Single-step and Multi-step Methods
Mahdi Salmani, Alireza Dehghanpour Farashah, Mohammad Azizmalayeri, Mahdi Amiri, Navid Eslami, Mohammad Taghi Manzuri, Mohammad Hossein Rohban