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
Empirical Study of Quality Image Assessment for Synthesis of Fetal Head Ultrasound Imaging with DCGANs
Thea Bautista, Jacqueline Matthew, Hamideh Kerdegari, Laura Peralta Pereira, Miguel Xochicale
An Empirical Study of Retrieval-enhanced Graph Neural Networks
Dingmin Wang, Shengchao Liu, Hanchen Wang, Bernardo Cuenca Grau, Linfeng Song, Jian Tang, Song Le, Qi Liu
An Empirical Study on Internet Traffic Prediction Using Statistical Rolling Model
Sajal Saha, Anwar Haque, Greg Sidebottom
ElitePLM: An Empirical Study on General Language Ability Evaluation of Pretrained Language Models
Junyi Li, Tianyi Tang, Zheng Gong, Lixin Yang, Zhuohao Yu, Zhipeng Chen, Jingyuan Wang, Wayne Xin Zhao, Ji-Rong Wen