Model Improvement
Model improvement research focuses on enhancing the performance, interpretability, and robustness of machine learning models across diverse applications. Current efforts concentrate on developing automated model refinement techniques, leveraging large language models as instructors, and integrating richer data sources (e.g., physical properties, biomarkers) to improve accuracy and explainability. These advancements are crucial for addressing challenges like bias mitigation, data scarcity, and the need for trustworthy AI systems, ultimately leading to more reliable and impactful models in various fields, including healthcare, finance, and natural language processing.
Papers
InterVLS: Interactive Model Understanding and Improvement with Vision-Language Surrogates
Jinbin Huang, Wenbin He, Liang Gou, Liu Ren, Chris Bryan
QualEval: Qualitative Evaluation for Model Improvement
Vishvak Murahari, Ameet Deshpande, Peter Clark, Tanmay Rajpurohit, Ashish Sabharwal, Karthik Narasimhan, Ashwin Kalyan