When Search Engine Services meet Large Language Models: Visions and Challenges
Haoyi Xiong, Jiang Bian, Yuchen Li, Xuhong Li, Mengnan Du, Shuaiqiang, Wang, Dawei Yin, Sumi Helal

TL;DR
This paper explores the integration of Large Language Models with search engines, highlighting mutual benefits, innovative applications, challenges, and future research directions in enhancing information retrieval and content understanding.
Contribution
It provides a comprehensive analysis of how LLMs can be used to improve search engines and vice versa, introducing new methods and discussing key challenges and research needs.
Findings
Search engines can supply high-quality datasets for LLM pre-training.
Using search results improves LLM accuracy and relevance.
LLMs can enhance search ranking and content summarization.
Abstract
Combining Large Language Models (LLMs) with search engine services marks a significant shift in the field of services computing, opening up new possibilities to enhance how we search for and retrieve information, understand content, and interact with internet services. This paper conducts an in-depth examination of how integrating LLMs with search engines can mutually benefit both technologies. We focus on two main areas: using search engines to improve LLMs (Search4LLM) and enhancing search engine functions using LLMs (LLM4Search). For Search4LLM, we investigate how search engines can provide diverse high-quality datasets for pre-training of LLMs, how they can use the most relevant documents to help LLMs learn to answer queries more accurately, how training LLMs with Learning-To-Rank (LTR) tasks can enhance their ability to respond with greater precision, and how incorporating recent…
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Taxonomy
TopicsWeb Data Mining and Analysis
Methodstravel james · Focus
