Dense Retrieval Model
Dense retrieval models aim to efficiently find relevant information within massive datasets by representing text as dense vectors, enabling faster similarity comparisons than traditional methods. Current research focuses on improving model robustness, efficiency, and multilingual capabilities, exploring architectures like ColBERT and leveraging techniques such as knowledge distillation, instruction tuning, and contrastive learning to enhance retrieval accuracy. These advancements are significant for various applications, including improved search engines, question answering systems, and knowledge retrieval tasks, particularly in low-resource language settings.
Papers
October 2, 2024
September 24, 2024
August 29, 2024
August 22, 2024
July 9, 2024
June 25, 2024
March 31, 2024
March 27, 2024
February 23, 2024
January 23, 2024
December 30, 2023
December 11, 2023
November 14, 2023
November 7, 2023
November 2, 2023
September 18, 2023
August 19, 2023
August 9, 2023
July 31, 2023