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
A method for ethical AI in Defence: A case study on developing trustworthy autonomous systems
Tara Roberson, Stephen Bornstein, Rain Liivoja, Simon Ng, Jason Scholz, S. Kate Devitt
Predicting Parking Lot Availability by Graph-to-Sequence Model: A Case Study with SmartSantander
Yuya Sasaki, Junya Takayama, Juan Ramón Santana, Shohei Yamasaki, Tomoya Okuno, Makoto Onizuka
Transferring Studies Across Embodiments: A Case Study in Confusion Detection
Na Li, Robert Ross
Exploring Transformers for Behavioural Biometrics: A Case Study in Gait Recognition
Paula Delgado-Santos, Ruben Tolosana, Richard Guest, Farzin Deravi, Ruben Vera-Rodriguez
Fair Classification via Transformer Neural Networks: Case Study of an Educational Domain
Modar Sulaiman, Kallol Roy
Towards a Deep Multi-layered Dialectal Language Analysis: A Case Study of African-American English
Jamell Dacon
Knowledge Graph - Deep Learning: A Case Study in Question Answering in Aviation Safety Domain
Ankush Agarwal, Raj Gite, Shreya Laddha, Pushpak Bhattacharyya, Satyanarayan Kar, Asif Ekbal, Prabhjit Thind, Rajesh Zele, Ravi Shankar
A Cross-City Federated Transfer Learning Framework: A Case Study on Urban Region Profiling
Gaode Chen, Yijun Su, Xinghua Zhang, Anmin Hu, Guochun Chen, Siyuan Feng, Ji Xiang, Junbo Zhang, Yu Zheng