Improving A Deep Neural Network Generative-Based Chatbot Model

A chatbot is an application that is developed in the field of machine learning, which has become a hot topic of research in recent years. The majority of today's chatbots integrate the Artificial Neural Network (ANN) approach with a Deep Learning environment, which results in a new generation c...

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Main Authors: Wan Solehah, Wan Ahmad, Mohamad Nazim, Jambli
Format: Article
Language:English
Published: Penerbit UTM Press 2024
Subjects:
Online Access:http://ir.unimas.my/id/eprint/45008/2/IMPROVINGADEEPNEURAL.pdf
http://ir.unimas.my/id/eprint/45008/
https://journals.utm.my/aej/article/view/20663
https://doi.org/10.11113/aej.v14.20663
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spelling my.unimas.ir.450082024-06-20T06:47:45Z http://ir.unimas.my/id/eprint/45008/ Improving A Deep Neural Network Generative-Based Chatbot Model Wan Solehah, Wan Ahmad Mohamad Nazim, Jambli Q Science (General) T Technology (General) A chatbot is an application that is developed in the field of machine learning, which has become a hot topic of research in recent years. The majority of today's chatbots integrate the Artificial Neural Network (ANN) approach with a Deep Learning environment, which results in a new generation chatbot known as a Generative-Based Chatbot. The current chatbot application mostly fails to recognize the optimum capacity of the network environment due to its complex nature resulting in low accuracy and loss rate. In this paper, we aim to conduct an experiment in evaluating the performance of chatbot model when manipulating the selected hyperparameters that can greatly contribute to the well-performed model without modifying any major structures and algorithms in the model. The experiment involves training two models, which are the Attentive Sequence-to-Sequence model (baseline model), and Attentive Seq2Sequence with Hyperparametric Optimization. The result was observed by training two models on Cornell Movie-Dialogue Corpus, run by using 10 epochs. The comparison shows that after optimization, the model’s accuracy and loss rate were 87% and 0.51%, respectively, compared to the results before optimizing the network (79% accuracy and 1.05% loss). Penerbit UTM Press 2024-05-31 Article PeerReviewed text en http://ir.unimas.my/id/eprint/45008/2/IMPROVINGADEEPNEURAL.pdf Wan Solehah, Wan Ahmad and Mohamad Nazim, Jambli (2024) Improving A Deep Neural Network Generative-Based Chatbot Model. ASEAN Engineering Journal (AEJ), 14 (2). pp. 45-52. ISSN 2586–9159 https://journals.utm.my/aej/article/view/20663 https://doi.org/10.11113/aej.v14.20663
institution Universiti Malaysia Sarawak
building Centre for Academic Information Services (CAIS)
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Sarawak
content_source UNIMAS Institutional Repository
url_provider http://ir.unimas.my/
language English
topic Q Science (General)
T Technology (General)
spellingShingle Q Science (General)
T Technology (General)
Wan Solehah, Wan Ahmad
Mohamad Nazim, Jambli
Improving A Deep Neural Network Generative-Based Chatbot Model
description A chatbot is an application that is developed in the field of machine learning, which has become a hot topic of research in recent years. The majority of today's chatbots integrate the Artificial Neural Network (ANN) approach with a Deep Learning environment, which results in a new generation chatbot known as a Generative-Based Chatbot. The current chatbot application mostly fails to recognize the optimum capacity of the network environment due to its complex nature resulting in low accuracy and loss rate. In this paper, we aim to conduct an experiment in evaluating the performance of chatbot model when manipulating the selected hyperparameters that can greatly contribute to the well-performed model without modifying any major structures and algorithms in the model. The experiment involves training two models, which are the Attentive Sequence-to-Sequence model (baseline model), and Attentive Seq2Sequence with Hyperparametric Optimization. The result was observed by training two models on Cornell Movie-Dialogue Corpus, run by using 10 epochs. The comparison shows that after optimization, the model’s accuracy and loss rate were 87% and 0.51%, respectively, compared to the results before optimizing the network (79% accuracy and 1.05% loss).
format Article
author Wan Solehah, Wan Ahmad
Mohamad Nazim, Jambli
author_facet Wan Solehah, Wan Ahmad
Mohamad Nazim, Jambli
author_sort Wan Solehah, Wan Ahmad
title Improving A Deep Neural Network Generative-Based Chatbot Model
title_short Improving A Deep Neural Network Generative-Based Chatbot Model
title_full Improving A Deep Neural Network Generative-Based Chatbot Model
title_fullStr Improving A Deep Neural Network Generative-Based Chatbot Model
title_full_unstemmed Improving A Deep Neural Network Generative-Based Chatbot Model
title_sort improving a deep neural network generative-based chatbot model
publisher Penerbit UTM Press
publishDate 2024
url http://ir.unimas.my/id/eprint/45008/2/IMPROVINGADEEPNEURAL.pdf
http://ir.unimas.my/id/eprint/45008/
https://journals.utm.my/aej/article/view/20663
https://doi.org/10.11113/aej.v14.20663
_version_ 1802981836964495360
score 13.160551