Large Relevance Improvement
Large relevance improvement research focuses on enhancing the performance and efficiency of various systems by optimizing existing models and algorithms. Current efforts concentrate on improving model architectures like transformers and convolutional neural networks, employing techniques such as parameter-efficient fine-tuning, dynamic loss weighting, and ensemble learning to achieve better accuracy, stability, and generalization. These advancements have significant implications across diverse fields, including computer vision, natural language processing, reinforcement learning, and scientific computing, leading to more robust and effective solutions in applications ranging from autonomous vehicles to biomedical image analysis.
Papers
June 7, 2022
June 6, 2022
May 31, 2022
May 28, 2022
May 21, 2022
May 2, 2022
April 19, 2022
April 14, 2022
April 5, 2022
March 30, 2022
March 21, 2022
March 3, 2022
February 28, 2022
January 13, 2022
January 11, 2022
December 8, 2021
December 3, 2021
November 30, 2021