Query Generation
Query generation focuses on automatically creating effective search queries from various inputs, such as natural language descriptions of information needs or example documents, to improve information retrieval efficiency and effectiveness. Current research emphasizes improving query relevance and diversity through techniques like retrieval-augmented generation, neurosymbolic reasoning, and ensemble methods, often leveraging large language models (LLMs) and incorporating user feedback for iterative refinement. These advancements have significant implications for various applications, including cross-lingual information retrieval, clinical cohort discovery, and personalized recommendation systems, by enabling more efficient and accurate access to information.
Papers
Cooperative SQL Generation for Segmented Databases By Using Multi-functional LLM Agents
Zhiguang Wu, Fengbin Zhu, Xuequn Shang, Yupei Zhang, Pan Zhou
A Collaborative Multi-Agent Approach to Retrieval-Augmented Generation Across Diverse Data
Aniruddha Salve, Saba Attar, Mahesh Deshmukh, Sayali Shivpuje, Arnab Mitra Utsab