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
Understanding Jailbreak Success: A Study of Latent Space Dynamics in Large Language Models
Sarah Ball, Frauke Kreuter, Nina Panickssery
Enhanced Object Detection: A Study on Vast Vocabulary Object Detection Track for V3Det Challenge 2024
Peixi Wu, Bosong Chai, Xuan Nie, Longquan Yan, Zeyu Wang, Qifan Zhou, Boning Wang, Yansong Peng, Hebei Li
An approximation-based approach versus an AI one for the study of CT images of abdominal aorta aneurysms
Lucrezia Rinelli, Arianna Travaglini, Nicolò Vescera, Gianluca Vinti
Large Language Models as Recommender Systems: A Study of Popularity Bias
Jan Malte Lichtenberg, Alexander Buchholz, Pola Schwöbel
A study on the adequacy of common IQA measures for medical images
Anna Breger, Clemens Karner, Ian Selby, Janek Gröhl, Sören Dittmer, Edward Lilley, Judith Babar, Jake Beckford, Thomas R Else, Timothy J Sadler, Shahab Shahipasand, Arthikkaa Thavakumar, Michael Roberts, Carola-Bibiane Schönlieb
A Study of Plasticity Loss in On-Policy Deep Reinforcement Learning
Arthur Juliani, Jordan T. Ash
A study of why we need to reassess full reference image quality assessment with medical images
Anna Breger, Ander Biguri, Malena Sabaté Landman, Ian Selby, Nicole Amberg, Elisabeth Brunner, Janek Gröhl, Sepideh Hatamikia, Clemens Karner, Lipeng Ning, Sören Dittmer, Michael Roberts, AIX-COVNET Collaboration, Carola-Bibiane Schönlieb
DeepHGNN: Study of Graph Neural Network based Forecasting Methods for Hierarchically Related Multivariate Time Series
Abishek Sriramulu, Nicolas Fourrier, Christoph Bergmeir