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
Exploring Foundation Models for Synthetic Medical Imaging: A Study on Chest X-Rays and Fine-Tuning Techniques
Davide Clode da Silva, Marina Musse Bernardes, Nathalia Giacomini Ceretta, Gabriel Vaz de Souza, Gabriel Fonseca Silva, Rafael Heitor Bordini, Soraia Raupp Musse
Optical Coherence Tomography Angiography-OCTA dataset for the study of Diabetic Retinopathy
Pooja Bidwai, Shilpa Gite, Biswajeet Pradhan, Aditi Gupta, Kishore pahuja
Multi-Resolution Graph Analysis of Dynamic Brain Network for Classification of Alzheimer's Disease and Mild Cognitive Impairment
Ali Khazaee, Abdolreza Mohammadi, Ruairi O'Reilly
Reasoning Beyond Bias: A Study on Counterfactual Prompting and Chain of Thought Reasoning
Kyle Moore, Jesse Roberts, Thao Pham, Douglas Fisher
Study of MRI-compatible Notched Plastic Ultrasonic Stator with FEM Simulation and Holography Validation
Zhanyue Zhao, Haimi Tang, Paulo Carvalho, Cosme Furlong, Gregory S. Fischer