Unified Framework
Unified frameworks in machine learning aim to consolidate diverse approaches to a specific problem into a single, coherent architecture, improving efficiency and facilitating comparative analysis. Current research focuses on developing such frameworks for various tasks, including recommendation systems, video understanding, and natural language processing, often leveraging transformer models, diffusion models, and recurrent neural networks. These unified approaches enhance model performance, enable more robust comparisons between methods, and offer improved interpretability and controllability, ultimately advancing both theoretical understanding and practical applications across numerous domains.
Papers
A Unified Approach for Comprehensive Analysis of Various Spectral and Tissue Doppler Echocardiography
Jaeik Jeon, Jiyeon Kim, Yeonggul Jang, Yeonyee E. Yoon, Dawun Jeong, Youngtaek Hong, Seung-Ah Lee, Hyuk-Jae Chang
Uni-COAL: A Unified Framework for Cross-Modality Synthesis and Super-Resolution of MR Images
Zhiyun Song, Zengxin Qi, Xin Wang, Xiangyu Zhao, Zhenrong Shen, Sheng Wang, Manman Fei, Zhe Wang, Di Zang, Dongdong Chen, Linlin Yao, Qian Wang, Xuehai Wu, Lichi Zhang
Asynchronous SGD on Graphs: a Unified Framework for Asynchronous Decentralized and Federated Optimization
Mathieu Even, Anastasia Koloskova, Laurent Massoulié
A Unified Framework to Enforce, Discover, and Promote Symmetry in Machine Learning
Samuel E. Otto, Nicholas Zolman, J. Nathan Kutz, Steven L. Brunton