A Chatbot Intent Classifier for Supporting High School Students

Author:

Assayed Suha Khalil,Shaalan Khaled,Alkhatib Manar

Abstract

INTRODUCTION: An intent classification is a challenged task in Natural Language Processing (NLP) as we are asking the machine to understand our language by categorizing the users’ requests. As a result, the intent classification plays an essential role in having a chatbot conversation that understand students’ requests. OBJECTIVES: In this study, we developed a novel chatbot called “HSchatbot” for predicting the intent classifications from high school students’ enquiries. Evidently, students in high schools are the most concerned among all students about their future; thus, in this stage they need an instant support in order to prepare them to take the right decision for their career choice. METHODS: The authors in this study used the Multinomial Naive-Bayes and Random Forest classifiers for predicting the students’ enquiries, which in turn improved the performance of the classifiers by using the feature’s extractions. RESULTS: The results show that the random forest classifier performed better than Multinomial Naive-Bayes since the performance of this model is checked by using different metrics like accuracy, precision, recall and F1 score. Moreover, all showed high accuracy scores exceeding 90% in all metrics. However, the accuracy of Multinomial Naive-Bayes classifier performed much better when using CountVectorizers compared to using the TF-IDF. CONCLUSION: In the future work, the results will be analysed and investigated in order to figure out the main factors that affect the performance of Multinomial Naive-Bayes classifier, as well as evaluating the model with using a large corpus of students’ questions and enquiries.

Publisher

European Alliance for Innovation n.o.

Subject

Information Systems and Management,Computer Networks and Communications,Computer Science Applications,Hardware and Architecture,Information Systems,Software

Reference26 articles.

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2. Zahour, O., El Habib Benlahmar, A. E., Ouchra, H., & Hourrane, O. (2020). Towards a Chatbot for educational and vocational guidance in Morocco: Chatbot E-Orientation. International Journal, 9(2).

3. Cranmore, J., Adams-Johnson, S. D., Wiley, J., & Holloway, A. (2019). Advising high school students for admission to college fine arts programs. Journal of School Counseling, [17](10).

4. Alonso, P. (2020). Faster and More Resource-Efficient Intent Classification (Doctoral dissertation, Luleå University of Technology).

5. Hefny, A. H., Dafoulas, G. A., & Ismail, M. A. (2020, December). Intent classification for a management conversational assistant. In 2020 15th International Conference on Computer Engineering and Systems (ICCES) (pp. 1-6). IEEE.

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