Enhancing service excellence: analyzing natural language question answering with advanced cosine similarity

R. Arifudin, Subhan Subhan, Yahya Nur Ifriza
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引用次数: 0

Abstract

Information related to student services in higher education must be produced and disseminated in various forms. Covid-19 pandemic, student services with a remote model related to this question and answer become very important. To carry out this automation process, the advanced cosine similarity method is used to check the similarity of the questions to the database and statistics to calculate the similarity value of each word. The proposed paper proceeds with three phases. The first stage to solve this problem is the data processed in question; the professional next step is word insertion. It converts alphanumeric words to vector format. Each word is a vector that represents a point in space with a certain dimension. The recommended advanced cosine similarity data still must be analyzed into a statistical approach. We will measure accuracy to get results so that optimal results and answers are obtained, research procedures are carried out based on literature study, initial data collection and observation, system development, system testing, system analysis, and system evaluation. This research implemented in universities with student chat automation applications providing an accuracy 83.90% given by natural language question answering system (NLQAS) so that it can improve excellent service in universities.
提升卓越服务:利用高级余弦相似性分析自然语言问题解答
必须以各种形式制作和传播与高等教育中学生服务有关的信息。在 Covid-19 大流行的情况下,与学生服务相关的远程问答模式变得非常重要。为了实现这一自动化过程,我们采用了先进的余弦相似度方法来检查问题与数据库的相似度,并统计计算每个词的相似度值。本文拟分三个阶段进行。解决这一问题的第一阶段是问题数据处理;专业的下一步是单词插入。它将字母数字单词转换为矢量格式。每个词都是一个向量,代表空间中具有一定维度的点。推荐的高级余弦相似性数据仍然必须进行统计分析。我们将通过文献研究、初始数据收集和观察、系统开发、系统测试、系统分析和系统评估等研究程序来衡量准确性,以获得最佳结果和答案。这项研究在高校学生聊天自动化应用中实施,自然语言问题解答系统(NLQAS)的准确率达到 83.90%,从而提高了高校的优质服务水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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