首页 | 本学科首页   官方微博 | 高级检索  
     

基于检索重排序模型的文本差异化研究
引用本文:门业堃,钱梦迪,于钊,滕景竹,陈少坤,颜旭. 基于检索重排序模型的文本差异化研究[J]. 电测与仪表, 2023, 60(1): 57-63
作者姓名:门业堃  钱梦迪  于钊  滕景竹  陈少坤  颜旭
作者单位:国网北京市电力公司电力科学研究院,北京100075;北京恒华龙信数据科技有限公司,北京100088
基金项目:基于大数据分析的供应商绩效评价方法研究
摘    要:电力行业在设备质量评估中需要结合行业标准规范文件中指定的具体标准来对设备质量进行准确评估。文中通过基于检索重排序模型的文本差异化模型,建立自动化、信息化、智能化的标准差异化梳理技术,有效解决了当前设备质量评估时的费时费力问题,并提升了文本差异检索的准确率。文中主要围绕自动化、信息化、智能化的标准差异化梳理技术,通过基于检索重排序模型的信息检索模型,建立同一领域的不同标准文本的检索比对,检索出不同文件对同一技术有着不同要求的差异性内容并预警提示。文中的创新点是,利用检索重排序精确性高的优点,在保留传统差异性检索召回模型的召回候选能力的基础上进一步提高精确性。模型在真实的电力行业技术标准文档上进行了系统鲁棒的交叉验证,验证了提出的模型效果优异,模型具有良好的实用性,可以广泛应用于电力设备质量评估,供应商评价标准检索等领域。

关 键 词:差异性检索  排序学习  文本相似度  检索重排序  设备质量评估自动化
收稿时间:2020-03-10
修稿时间:2020-03-24

Text Differentiation Based on Reordering Retrieval Model
Men Yekun,Qian Mengdi,Yu Zhao,Teng Jingzhu,Chen Shaokun and Yan Xu. Text Differentiation Based on Reordering Retrieval Model[J]. Electrical Measurement & Instrumentation, 2023, 60(1): 57-63
Authors:Men Yekun  Qian Mengdi  Yu Zhao  Teng Jingzhu  Chen Shaokun  Yan Xu
Affiliation:State Grid Beijing Electric Power Company Electric Power Research Institute,State Grid Beijing Electric Power Company Electric Power Research Institute,State Grid Beijing Electric Power Company Electric Power Research Institute,State Grid Beijing Electric Power Company Electric Power Research Institute,Beijing Henghua Longxin Data Technology Co,Ltd,Beijing Henghua Longxin Data Technology Co,Ltd
Abstract:The power industry needs to combine the specific standards specified in the industry standard specifications to accurately evaluate the quality of the equipment. Through the text differentiation model based on the retrieval and reordering model, this paper establishes standardization techniques for automation, informationization, and intelligent differentiation, which effectively solves the time-consuming and labor-intensive problems of current equipment quality assessment, and improves the accuracy of text difference retrieval . The article mainly focuses on the standardization and differentiation techniques of automation, informationization, and intelligence. Through the information retrieval model based on the retrieval reordering model, the retrieval comparison of different standard texts in the same field is established, and different documents retrieved have different requirements for the same technology. Different content and early warning tips. The innovation point in this paper is to further improve the accuracy on the basis of retaining the recall ability of the traditional differential retrieval and recall model by taking advantage of the high accuracy of retrieval reordering. The model was systematically and robustly cross-validated on the actual technical standards documents of the power industry, and it was verified that the proposed model has excellent results and the model has good practicability. It can be widely used in power equipment quality evaluation, supplier evaluation standard retrieval and other fields.
Keywords:differential retrieval   ranking learning   text similarity   retrieval reordering   automation of equipment quality assessment
本文献已被 万方数据 等数据库收录!
点击此处可从《电测与仪表》浏览原始摘要信息
点击此处可从《电测与仪表》下载免费的PDF全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号