Study Feature
Research on "Study Feature" broadly investigates the performance and limitations of various machine learning models across diverse tasks, focusing on areas like data compression, emotion recognition, remaining useful life prediction, and medical image generation. Current studies heavily utilize large language models (LLMs) and deep convolutional neural networks (CNNs), often exploring techniques like transfer learning, prompt engineering, and ensemble methods to improve model accuracy and robustness. This research is significant for advancing both fundamental understanding of model capabilities and for developing practical applications in fields ranging from healthcare and industrial maintenance to natural language processing and security.
Papers
A Cross-Lingual Statutory Article Retrieval Dataset for Taiwan Legal Studies
Yen-Hsiang Wang, Feng-Dian Su, Tzu-Yu Yeh, Yao-Chung Fan
Have the VLMs Lost Confidence? A Study of Sycophancy in VLMs
Shuo Li, Tao Ji, Xiaoran Fan, Linsheng Lu, Leyi Yang, Yuming Yang, Zhiheng Xi, Rui Zheng, Yuran Wang, Xiaohui Zhao, Tao Gui, Qi Zhang, Xuanjing Huang
Gender Bias in Decision-Making with Large Language Models: A Study of Relationship Conflicts
Sharon Levy, William D. Adler, Tahilin Sanchez Karver, Mark Dredze, Michelle R. Kaufman
News-Driven Stock Price Forecasting in Indian Markets: A Comparative Study of Advanced Deep Learning Models
Kaushal Attaluri, Mukesh Tripathi, Srinithi Reddy, Shivendra
Is Structure Dependence Shaped for Efficient Communication?: A Case Study on Coordination
Kohei Kajikawa, Yusuke Kubota, Yohei Oseki
Study on the Helpfulness of Explainable Artificial Intelligence
Tobias Labarta, Elizaveta Kulicheva, Ronja Froelian, Christian Geißler, Xenia Melman, Julian von Klitzing
EmojiHeroVR: A Study on Facial Expression Recognition under Partial Occlusion from Head-Mounted Displays
Thorben Ortmann, Qi Wang, Larissa Putzar
Remaining Useful Life Prediction: A Study on Multidimensional Industrial Signal Processing and Efficient Transfer Learning Based on Large Language Models
Yan Chen, Cheng Liu