Retrieval Model
Retrieval models aim to efficiently select relevant information from large datasets in response to a query, serving as a crucial component in various applications like question answering and recommendation systems. Current research emphasizes improving retrieval accuracy and robustness through techniques like instruction-tuning, the use of multiple expert models with routing mechanisms, and hybrid approaches combining different retrieval methods. These advancements are driving significant improvements in downstream tasks, impacting fields ranging from legal information retrieval to personalized language learning and enhancing the efficiency and effectiveness of large language models.
Papers
Generative Retrieval with Large Language Models
Ye Wang, Xinrun Xu, Rui Xie, Wenxin Hu, Wei Ye
CorpusBrain++: A Continual Generative Pre-Training Framework for Knowledge-Intensive Language Tasks
Jiafeng Guo, Changjiang Zhou, Ruqing Zhang, Jiangui Chen, Maarten de Rijke, Yixing Fan, Xueqi Cheng
UniRetriever: Multi-task Candidates Selection for Various Context-Adaptive Conversational Retrieval
Hongru Wang, Boyang Xue, Baohang Zhou, Rui Wang, Fei Mi, Weichao Wang, Yasheng Wang, Kam-Fai Wong