Dense Retrieval
Dense retrieval aims to efficiently find relevant information within massive datasets by representing both queries and documents as dense vectors, enabling faster and more accurate similarity searches compared to traditional methods. Current research focuses on improving model architectures like bi-encoders and late-interaction models, exploring techniques such as knowledge distillation, multimodal retrieval (incorporating speech), and efficient training strategies to handle large-scale data and stale embeddings. These advancements are significantly impacting information retrieval applications, particularly in open-domain question answering, conversational search, and enterprise search, by enhancing both speed and accuracy.
Papers
November 19, 2024
November 1, 2024
October 28, 2024
October 27, 2024
October 25, 2024
October 21, 2024
October 15, 2024
October 2, 2024
September 20, 2024
September 7, 2024
September 3, 2024
August 22, 2024
August 15, 2024
August 14, 2024
July 29, 2024
July 2, 2024
June 25, 2024
June 24, 2024
June 10, 2024