Visual Analogue Scale
Visual Analogue Scale (VAS) research, while not explicitly mentioned in the provided abstracts, is implicitly relevant to many of the described projects. These projects focus on developing and evaluating large-scale models across various domains, including language, image processing, and robotics, often using novel architectures like transformers and employing techniques such as federated learning and imitation learning to improve efficiency and performance. The overarching goal is to create more robust, scalable, and generalizable models, impacting fields ranging from natural language processing and computer vision to medical diagnosis and industrial automation. The success of these efforts hinges on the ability to effectively evaluate model performance across diverse and complex tasks, a challenge that implicitly relates to the need for robust and reliable evaluation metrics, such as those potentially provided by a VAS.
Papers
Predictive Analysis of Tuberculosis Treatment Outcomes Using Machine Learning: A Karnataka TB Data Study at a Scale
SeshaSai Nath Chinagudaba, Darshan Gera, Krishna Kiran Vamsi Dasu, Uma Shankar S, Kiran K, Anil Singarajpure, Shivayogappa. U, Somashekar N, Vineet Kumar Chadda, Sharath B N
Generative Pretrained Structured Transformers: Unsupervised Syntactic Language Models at Scale
Xiang Hu, Pengyu Ji, Qingyang Zhu, Wei Wu, Kewei Tu
Parallel-friendly Spatio-Temporal Graph Learning for Photovoltaic Degradation Analysis at Scale
Yangxin Fan, Raymond Wieser, Laura Bruckman, Roger French, Yinghui Wu
Lying Blindly: Bypassing ChatGPT's Safeguards to Generate Hard-to-Detect Disinformation Claims at Scale
Freddy Heppell, Mehmet E. Bakir, Kalina Bontcheva