Case Study
Case studies in various scientific fields are increasingly leveraging large language models (LLMs) and other machine learning techniques to address diverse challenges. Current research focuses on improving LLM performance through methods like multi-task fine-tuning, retrieval augmentation, and post-hoc reward calibration to mitigate biases and enhance reliability, as well as exploring the application of LLMs in domains such as legal article recommendation, multilingual dataset auditing, and personalized risk assessment. This work highlights the growing importance of LLMs as tools for solving complex problems and improving the efficiency and accuracy of existing processes across numerous disciplines.
Papers
Opportunities for Persian Digital Humanities Research with Artificial Intelligence Language Models; Case Study: Forough Farrokhzad
Arash Rasti Meymandi, Zahra Hosseini, Sina Davari, Abolfazl Moshiri, Shabnam Rahimi-Golkhandan, Khashayar Namdar, Nikta Feizi, Mohamad Tavakoli-Targhi, Farzad Khalvati
Potential and Limitations of LLMs in Capturing Structured Semantics: A Case Study on SRL
Ning Cheng, Zhaohui Yan, Ziming Wang, Zhijie Li, Jiaming Yu, Zilong Zheng, Kewei Tu, Jinan Xu, Wenjuan Han
Selective Fine-tuning on LLM-labeled Data May Reduce Reliance on Human Annotation: A Case Study Using Schedule-of-Event Table Detection
Bhawesh Kumar, Jonathan Amar, Eric Yang, Nan Li, Yugang Jia
Exploring the Potential of Human-LLM Synergy in Advancing Qualitative Analysis: A Case Study on Mental-Illness Stigma
Han Meng, Yitian Yang, Yunan Li, Jungup Lee, Yi-Chieh Lee