Systematic Study
Systematic studies in various fields of machine learning and natural language processing rigorously investigate the performance and limitations of different models and techniques. Current research focuses on identifying and mitigating biases in models, optimizing prompting strategies for improved code generation and question answering, and enhancing model robustness through techniques like knowledge distillation and data augmentation. These systematic investigations are crucial for improving the reliability and fairness of AI systems, leading to more effective and trustworthy applications across diverse domains.
Papers
A Systematic Study on Object Recognition Using Millimeter-wave Radar
Maloy Kumar Devnath, Avijoy Chakma, Mohammad Saeid Anwar, Emon Dey, Zahid Hasan, Marc Conn, Biplab Pal, Nirmalya Roy
A Systematic Study of Knowledge Distillation for Natural Language Generation with Pseudo-Target Training
Nitay Calderon, Subhabrata Mukherjee, Roi Reichart, Amir Kantor