基于人工智能标记语言(AIML)的妊娠障碍诊断聊天机器人

Q3 Decision Sciences
A. Rahmatulloh, Anjar Ginanjar, I. Darmawan, Neng Ika Kurniati, Erna Haerani
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引用次数: 0

摘要

人工智能在复杂性和广泛应用方面不断发展。本研究旨在创建一个聊天机器人应用程序在卫生部门关于怀孕障碍的早期诊断。根据基本的健康研究,只有44%的孕妇知道怀孕的危险迹象。开发的聊天机器人应用程序有望促进和增加孕妇对怀孕危险迹象的了解,特别是对妊娠疾病的早期诊断。该聊天机器人应用基于人工智能标记语言,采用pandorabts框架,采用问答概念,采用人工智能技术开发。测试分两个阶段进行:功能匹配和模式匹配。功能测试采用黑盒测试方法,聊天机器人的模式匹配测试采用基于用户输入和聊天机器人知识库中关键词相似度的句子相似度和双元图方法。功能测试结果表明,聊天机器人应用运行良好,合格标准达到81.4%,关键字相似度测试(模式匹配)结果为0到1,即用户输入与模式的相似度值为1。同时,零值没有相似性,因此bot将其作为自由输入响应。因此可以得出结论,当模式和输入具有相同的相似度时,机器人可以响应用户的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chatbot for Diagnosis of Pregnancy Disorders using Artificial Intelligence Markup Language (AIML)
Artificial Intelligence has evolved in sophistication and widespread use. This study aims to create a chatbot application in the health sector regarding the early diagnosis of pregnancy disorders. Based on basic health research, only 44 percent of pregnant women know the danger signs of pregnancy. The chatbot application developed is expected to facilitate and increase knowledge for pregnant women about the danger signs of pregnancy, especially early diagnosis of pregnancy disorders. The chatbot application was developed with artificial intelligence technology based on Artificial Intelligence Markup Language with the question-answer concept using the Pandorabots framework. The test is carried out in two stages: functional and pattern matching. The functional testing uses the black-box testing method, and the pattern-matching test on the chatbot uses the sentence similarity and bigram methods based on user input and keywords similarity in the bot's knowledge base. The functional testing results show that the chatbot application runs well, with the eligibility criteria reaching 81.4% and the results of the keyword similarity test (pattern matching) are zero to one, in the sense that the value of one has the same similarity between user input and pattern. Meanwhile, the zero value has no similarities, so the bot will respond to it as free input. So it can be concluded that the bot can respond to user questions when the pattern and input have the same level of similarity.
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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