计算机研究与发展2024,Vol.61Issue(12) :3168-3187.DOI:10.7544/issn1000-1239.202220837

基于深度学习的查询建议综述

Review of Deep Learning Based Query Suggestion

田萱 徐泽洲 王子涵
计算机研究与发展2024,Vol.61Issue(12) :3168-3187.DOI:10.7544/issn1000-1239.202220837

基于深度学习的查询建议综述

Review of Deep Learning Based Query Suggestion

田萱 1徐泽洲 1王子涵1
扫码查看

作者信息

  • 1. 北京林业大学信息学院 北京 100083;国家林业草原林业智能信息处理工程技术研究中心(北京林业大学) 北京 100083
  • 折叠

摘要

查询建议是当今搜索引擎必不可少的一个组成部分,它可以在用户输入完整查询前提供查询候选项,帮助用户更准确、更快速地表达信息需求.深度学习技术有助于提升查询建议的准确度,成为近年来推动查询建议发展的主流技术.主要对基于深度学习的查询建议研究现状进行归纳整理与分析对比,根据深度学习应用阶段不同,把其分为生成式查询建议与排名式查询建议 2类,分析其中每种模型的建模思路和处理特征.此外还介绍了查询建议领域常用的数据集、基线方法与评价指标,并对比其中不同模型的技术特点与实验结果.最后总结了基于深度学习的查询建议研究目前面临的挑战与未来发展趋势.

Abstract

Query suggestion(QS)is an indispensable part of search engines.It can provide query candidates before users entering a complete query to help express their information needs more accurately and more quickly.Deep learning helps to improve the accuracy of QS and it has become the mainstream technology to promote the development of QS in recent years.We mainly summarize,analyze and compare the research status of deep learning based QS(DQS).According to the different application stages of deep learning,DQS methods are divided into two categories:generative QS methods and ranking-based QS suggestion methods,and the modeling ideas of each model are analyzed.In addition,the data sets,baselines and evaluation indexes commonly used in the field of QS are introduced,and the technical characteristics and experimental results of different models are compared.Finally,the current challenges and future development trends of QS research based on deep learning are summarized.

关键词

查询建议/深度学习/查询自动补全/编码器-解码器/神经语言模型

Key words

query suggestion(QS)/deep learning/query auto-completion/encoder-decoder/neural language model

引用本文复制引用

出版年

2024
计算机研究与发展
中国科学院计算技术研究所 中国计算机学会

计算机研究与发展

CSTPCDCSCD北大核心
影响因子:2.649
ISSN:1000-1239
段落导航相关论文