Empirical Study
Empirical studies across diverse fields are rigorously evaluating the capabilities and limitations of various machine learning models, particularly large language models and neural networks. Current research focuses on assessing model performance across different tasks (e.g., question answering, image classification, code generation), investigating the impact of model architecture and hyperparameter tuning, and analyzing the robustness of models to various challenges like adversarial attacks and data imbalance. These studies provide crucial insights into model behavior, identify areas for improvement, and inform the development of more reliable and effective AI systems for both scientific research and practical applications.
Papers
Personalized State Anxiety Detection: An Empirical Study with Linguistic Biomarkers and A Machine Learning Pipeline
Zhiyuan Wang, Mingyue Tang, Maria A. Larrazabal, Emma R. Toner, Mark Rucker, Congyu Wu, Bethany A. Teachman, Mehdi Boukhechba, Laura E. Barnes
An Empirical Study of Leveraging Knowledge Distillation for Compressing Multilingual Neural Machine Translation Models
Varun Gumma, Raj Dabre, Pratyush Kumar