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
AutoDetect: Towards a Unified Framework for Automated Weakness Detection in Large Language Models
Jiale Cheng, Yida Lu, Xiaotao Gu, Pei Ke, Xiao Liu, Yuxiao Dong, Hongning Wang, Jie Tang, Minlie Huang
UNICAD: A Unified Approach for Attack Detection, Noise Reduction and Novel Class Identification
Alvaro Lopez Pellicer, Kittipos Giatgong, Yi Li, Neeraj Suri, Plamen Angelov
UBiSS: A Unified Framework for Bimodal Semantic Summarization of Videos
Yuting Mei, Linli Yao, Qin Jin
You Only Acquire Sparse-channel (YOAS): A Unified Framework for Dense-channel EEG Generation
Hongyu Chen, Weiming Zeng, Luhui Cai, Lei Wang, Jia Lu, Yueyang Li, Hongjie Yan, Wai Ting Siok, Nizhuan Wang
A Unified Framework for Input Feature Attribution Analysis
Jingyi Sun, Pepa Atanasova, Isabelle Augenstein
A Unified Framework for Synthesizing Multisequence Brain MRI via Hybrid Fusion
Jihoon Cho, Jonghye Woo, Jinah Park