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
Representational Systems Theory: A Unified Approach to Encoding, Analysing and Transforming Representations
Daniel Raggi, Gem Stapleton, Mateja Jamnik, Aaron Stockdill, Grecia Garcia Garcia, Peter C-H. Cheng
GRETEL: A unified framework for Graph Counterfactual Explanation Evaluation
Mario Alfonso Prado-Romero, Giovanni Stilo
UViM: A Unified Modeling Approach for Vision with Learned Guiding Codes
Alexander Kolesnikov, André Susano Pinto, Lucas Beyer, Xiaohua Zhai, Jeremiah Harmsen, Neil Houlsby
Constructive Interpretability with CoLabel: Corroborative Integration, Complementary Features, and Collaborative Learning
Abhijit Suprem, Sanjyot Vaidya, Suma Cherkadi, Purva Singh, Joao Eduardo Ferreira, Calton Pu