Cross Encoder
Cross-encoders are neural network architectures that jointly encode query and document pairs to determine semantic similarity, offering superior accuracy to methods that encode them separately (dual-encoders). Current research focuses on improving their efficiency for large-scale applications, including exploring shallow architectures, knowledge distillation from cross-encoders to more efficient dual-encoders, and adaptive indexing techniques to speed up k-NN search. These advancements are crucial for various applications like semantic search, question answering, and information retrieval, where high accuracy and scalability are essential.
Papers
December 12, 2022
October 30, 2022
October 23, 2022
March 10, 2022