EduChatbot: Implementing educational Chatbot for assisting the teaching-learning process by NLP-based hybrid heuristic adopted deep learning framework

IF 2.5 4区 计算机科学 Q2 COMPUTER SCIENCE, CYBERNETICS Kybernetes Pub Date : 2024-07-23 DOI:10.1108/k-01-2024-0103
B. Maheswari, Rajganesh Nagarajan
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Abstract

Purpose

A new Chatbot system is implemented to provide both voice-based and textual-based communication to address student queries without any delay. Initially, the input texts are gathered from the chat and then the gathered text is fed to pre-processing techniques like tokenization, stemming of words and removal of stop words. Then, the pre-processed data are given to the Natural Learning Process (NLP) for extracting the features, where the XLnet and Bidirectional Encoder Representations from Transformers (BERT) are utilized to extract the features. From these extracted features, the target-based fused feature pools are obtained. Then, the intent detection is carried out to extract the answers related to the user queries via Enhanced 1D-Convolutional Neural Networks with Long Short Term Memory (E1DCNN-LSTM) where the parameters are optimized using Position Averaging of Binary Emperor Penguin Optimizer with Colony Predation Algorithm (PA-BEPOCPA). Finally, the answers are extracted based on the intent of a particular student’s teaching materials like video, image or text. The implementation results are analyzed through different recently developed Chatbot detection models to validate the effectiveness of the newly developed model.

Design/methodology/approach

A smart model for the NLP is developed to help education-related institutions for an easy way of interaction between students and teachers with high prediction of accurate data for the given query. This research work aims to design a new educational Chatbot to assist the teaching-learning process with the NLP. The input data are gathered from the user through chats and given to the pre-processing stage, where tokenization, steaming of words and removal of stop words are used. The output data from the pre-processing stage is given to the feature extraction phase where XLnet and BERT are used. In this feature extraction, the optimal features are extracted using hybrid PA-BEPOCPA to maximize the correlation coefficient. The features from XLnet and features from BERT were given to target-based features fused pool to produce optimal features. Here, the best features are optimally selected using developed PA-BEPOCPA for maximizing the correlation among coefficients. The output of selected features is given to E1DCNN-LSTM for implementation of educational Chatbot with high accuracy and precision.

Findings

The investigation result shows that the implemented model achieves maximum accuracy of 57% more than Bidirectional long short-term memory (BiLSTM), 58% more than One Dimansional Convolutional Neural Network (1DCNN), 59% more than LSTM and 62% more than Ensemble for the given dataset.

Originality/value

The prediction accuracy was high in this proposed deep learning-based educational Chatbot system when compared with various baseline works.

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教育聊天机器人通过采用深度学习框架的基于 NLP 的混合启发式实现教育聊天机器人,以辅助教学过程
目的 实施一个新的聊天机器人系统,提供基于语音和文本的交流,以便及时解决学生的疑问。首先,从聊天中收集输入文本,然后对收集到的文本进行预处理,如标记化、词干化和删除停滞词。然后,将预处理后的数据交给自然学习过程(NLP)来提取特征,其中使用了 XLnet 和来自变换器的双向编码器表示法(BERT)来提取特征。从这些提取的特征中,可以获得基于目标的融合特征池。然后,通过具有长短期记忆(E1DCNN-LSTM)的增强型一维卷积神经网络(E1DCNN-LSTM)进行意图检测,提取与用户查询相关的答案。最后,根据特定学生的教学材料(如视频、图像或文本)的意图提取答案。通过最近开发的不同聊天机器人检测模型,对实施结果进行了分析,以验证新开发模型的有效性。 设计/方法/途径 针对 NLP 开发了一种智能模型,以帮助教育相关机构实现学生与教师之间的轻松互动,并对给定查询的准确数据进行高度预测。这项研究工作旨在设计一个新的教育聊天机器人,利用 NLP 辅助教学过程。通过聊天从用户那里收集输入数据,并将其交给预处理阶段,在预处理阶段,将使用标记化、蒸馏单词和删除停滞词等方法。来自预处理阶段的输出数据将进入特征提取阶段,在此阶段将使用 XLnet 和 BERT。在特征提取阶段,使用混合 PA-BEPOCPA 提取最佳特征,以最大限度地提高相关系数。来自 XLnet 的特征和来自 BERT 的特征被赋予基于目标的特征融合池,以产生最佳特征。在此,使用开发的 PA-BEPOCPA 优化选择最佳特征,以最大限度地提高系数之间的相关性。研究结果 研究结果表明,对于给定的数据集,所实现的模型比双向长短期记忆(BiLSTM)高出 57%,比一元卷积神经网络(1DCNN)高出 58%,比 LSTM 高出 59%,比 Ensemble 高出 62%。原创性/价值 与各种基线作品相比,这个基于深度学习的教育聊天机器人系统的预测准确率很高。
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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来源期刊
Kybernetes
Kybernetes 工程技术-计算机:控制论
CiteScore
4.90
自引率
16.00%
发文量
237
审稿时长
4.3 months
期刊介绍: Kybernetes is the official journal of the UNESCO recognized World Organisation of Systems and Cybernetics (WOSC), and The Cybernetics Society. The journal is an important forum for the exchange of knowledge and information among all those who are interested in cybernetics and systems thinking. It is devoted to improvement in the understanding of human, social, organizational, technological and sustainable aspects of society and their interdependencies. It encourages consideration of a range of theories, methodologies and approaches, and their transdisciplinary links. The spirit of the journal comes from Norbert Wiener''s understanding of cybernetics as "The Human Use of Human Beings." Hence, Kybernetes strives for examination and analysis, based on a systemic frame of reference, of burning issues of ecosystems, society, organizations, businesses and human behavior.
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