Automatic Analysis
Automatic analysis leverages computational methods, primarily deep learning, to efficiently extract meaningful information from diverse data sources, ranging from medical images and scientific text to audio recordings and social interactions. Current research focuses on developing and refining algorithms like convolutional neural networks (CNNs), Vision Transformers, and large language models (LLMs) for tasks such as image segmentation, feature extraction, and text analysis, often incorporating open-source toolkits for broader accessibility. This field significantly impacts various scientific disciplines by automating laborious tasks, improving the reproducibility and scalability of research, and enabling new avenues of analysis previously infeasible due to time and resource constraints.
Papers
CLERC: A Dataset for Legal Case Retrieval and Retrieval-Augmented Analysis Generation
Abe Bohan Hou, Orion Weller, Guanghui Qin, Eugene Yang, Dawn Lawrie, Nils Holzenberger, Andrew Blair-Stanek, Benjamin Van Durme
SLOctolyzer: Fully automatic analysis toolkit for segmentation and feature extracting in scanning laser ophthalmoscopy images
Jamie Burke, Samuel Gibbon, Justin Engelmann, Adam Threlfall, Ylenia Giarratano, Charlene Hamid, Stuart King, Ian J.C. MacCormick, Tom MacGillivray