Large Scale Search
Large-scale search aims to efficiently and effectively retrieve relevant information from massive datasets, focusing on improving accuracy, novelty, and speed. Current research emphasizes developing advanced learning-to-rank models, often incorporating transformer networks, graph neural networks, and large language models, to handle diverse data types and user queries, and address challenges like cold starts and biased feedback. These advancements are crucial for enhancing the performance of web search engines, recommendation systems, and other applications that rely on efficient information retrieval, ultimately impacting user experience and the accessibility of information.
Papers
Generative Pre-trained Ranking Model with Over-parameterization at Web-Scale (Extended Abstract)
Yuchen Li, Haoyi Xiong, Linghe Kong, Jiang Bian, Shuaiqiang Wang, Guihai Chen, Dawei Yin
Pre-trained Graphformer-based Ranking at Web-scale Search (Extended Abstract)
Yuchen Li, Haoyi Xiong, Linghe Kong, Zeyi Sun, Hongyang Chen, Shuaiqiang Wang, Dawei Yin