In the field of information retrieval, Query Likelihood Models (QLMs) rank documents based on the probability of generating the query given the content of a document. Recently, advanced large language models (LLMs) have emerged as effective QLMs, showcasing promising ranking capabilities. This paper focuses on investigating the genuine zero-shot ranking effectiveness of recent LLMs, which are solely pre-trained on unstructured text data without supervised instruction fine-tuning. Our findings reveal the robust zero-shot ranking ability of such LLMs, highlighting that additional instruction fine-tuning may hinder effectiveness unless a question generation task is present in the fine-tuning dataset. Furthermore, we introduce a novel state-of-the-art ranking system that integrates LLM-based QLMs with a hybrid zero-shot retriever, demonstrating exceptional effectiveness in both zero-shot and few-shot scenarios. We make our codebase publicly available at https://github.com/ielab/llm-qlm.
Tao ShenGuodong LongXiubo GengChongyang TaoYibin LeiTianyi ZhouMichael BlumensteinDaxin Jiang
Nancy Xiuzhi LiuDongsheng ZouNaiquan ChaiYuming YangHao WangXinyi Song
Junlong LiJin‐Yuan WangZhuosheng ZhangHai Zhao
Ju FanZihui GuSongyue ZhangYuxin ZhangZui ChenLei CaoGuoliang LiSamuel MaddenXiaoyong DuNan Tang