Deep Learning Based Amharic Chatbot for FAQs in Universities
Goitom Ybrah Hailu, Hadush Hailu, Shishay Welay

TL;DR
This paper presents a deep learning-based Amharic FAQ chatbot for universities, achieving over 91% accuracy and deployed on Facebook Messenger for accessible student support.
Contribution
It introduces a novel Amharic chatbot leveraging deep neural networks, NLP preprocessing, and deployment on social media, addressing language-specific challenges.
Findings
Deep learning model achieved 91.55% accuracy.
Effective handling of Amharic language variations.
Deployed chatbot on Facebook Messenger for 24/7 access.
Abstract
University students often spend a considerable amount of time seeking answers to common questions from administrators or teachers. This can become tedious for both parties, leading to a need for a solution. In response, this paper proposes a chatbot model that utilizes natural language processing and deep learning techniques to answer frequently asked questions (FAQs) in the Amharic language. Chatbots are computer programs that simulate human conversation through the use of artificial intelligence (AI), acting as a virtual assistant to handle questions and other tasks. The proposed chatbot program employs tokenization, normalization, stop word removal, and stemming to analyze and categorize Amharic input sentences. Three machine learning model algorithms were used to classify tokens and retrieve appropriate responses: Support Vector Machine (SVM), Multinomial Na\"ive Bayes, and deep…
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