Intelligent Agents in Educational Institutions: NEdBOT - NLP-based Chatbot for Administrative Support Using DialogFlow

Muhammad Shahroze Ali, F. Azam, Aon Safdar, Muhammad Waseem Anwar
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Abstract

Artificial intelligence (AI)-based chatbot systems have seen increased adaption in the educational domain in recent years owing to increased sophistication in the AI domain. However, most of the communication between students and educational institutions is still performed physically and causes major administrative overhead, especially during the time of admission. Contemporary pattern-matching-based and generative-based chatbots underperform to queries outside a limited scope, grammatically and structurally ambiguous inputs, outliers to pre-defined rule-set, and longer response times for a huge knowledge base. We proposed a NEdBOT-An NLP-based Educational Bot, developed by Natural Language Processing models integrated within the DialogFlow platform utilizing a Retrieval-based approach. We evaluate the developed chatbot on a custom dataset generated for the admissions use case of a prominent university. We used an objective evaluation criterion with real-world users to achieve an intent classification accuracy of 76.8% at an average mean response time of 216.43ms per query and a user-friendliness score of 72% on the System Usability Scale (SUS). The results demonstrate the proposed approach's ability to create robust, reliable, responsive, and user-friendly web-based smart chatbots that are highly scalable with the capability to handle wider scopes and vague inputs with ease.
教育机构中的智能代理:使用DialogFlow的基于nlp的行政支持聊天机器人NEdBOT
近年来,由于人工智能领域的复杂性增加,基于人工智能(AI)的聊天机器人系统在教育领域得到了越来越多的适应。然而,学生和教育机构之间的大部分交流仍然是通过身体进行的,这造成了很大的行政开销,尤其是在入学期间。当前基于模式匹配和基于生成的聊天机器人在有限范围之外的查询、语法和结构模糊的输入、预定义规则集的异常值以及对庞大知识库的较长响应时间方面表现不佳。我们提出了一个nedbot -一个基于nlp的教育机器人,利用基于检索的方法将自然语言处理模型集成到DialogFlow平台中。我们在为一所著名大学的招生用例生成的自定义数据集上评估开发的聊天机器人。我们使用真实世界用户的客观评估标准,在每个查询的平均响应时间为216.43ms的情况下,实现了76.8%的意图分类准确率,在系统可用性量表(SUS)上获得了72%的用户友好性得分。结果表明,所提出的方法能够创建健壮、可靠、响应迅速、用户友好的基于web的智能聊天机器人,这些机器人具有高度可扩展性,能够轻松处理更广泛的范围和模糊的输入。
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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