Enhancing Minority Sentiment Classification in Gastronomy Tourism: A Hybrid Sentiment Analysis Framework With Data Augmentation, Feature Engineering and Business Intelligence

The gastronomy tourism industry plays an important role in boosting local economies, enhancing the travel experience, and preserving culinary traditions unique to specific places. In this context, comprehending customer sentiments is of paramount importance for business decision-making, menu choice...

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Published in:IEEE ACCESS
Main Authors: Razali, Mohd Norhisham; Manaf, Syaifulnizam Abdul; Hanapi, Rozita Binti; Salji, Mohd Rafiz; Chiat, Lee Wen; Nisar, Kashif
Format: Article
Language:English
Published: IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001199995100001
author Razali
Mohd Norhisham; Manaf
Syaifulnizam Abdul; Hanapi
Rozita Binti; Salji
Mohd Rafiz; Chiat
Lee Wen; Nisar
Kashif
spellingShingle Razali
Mohd Norhisham; Manaf
Syaifulnizam Abdul; Hanapi
Rozita Binti; Salji
Mohd Rafiz; Chiat
Lee Wen; Nisar
Kashif
Enhancing Minority Sentiment Classification in Gastronomy Tourism: A Hybrid Sentiment Analysis Framework With Data Augmentation, Feature Engineering and Business Intelligence
Computer Science; Engineering; Telecommunications
author_facet Razali
Mohd Norhisham; Manaf
Syaifulnizam Abdul; Hanapi
Rozita Binti; Salji
Mohd Rafiz; Chiat
Lee Wen; Nisar
Kashif
author_sort Razali
spelling Razali, Mohd Norhisham; Manaf, Syaifulnizam Abdul; Hanapi, Rozita Binti; Salji, Mohd Rafiz; Chiat, Lee Wen; Nisar, Kashif
Enhancing Minority Sentiment Classification in Gastronomy Tourism: A Hybrid Sentiment Analysis Framework With Data Augmentation, Feature Engineering and Business Intelligence
IEEE ACCESS
English
Article
The gastronomy tourism industry plays an important role in boosting local economies, enhancing the travel experience, and preserving culinary traditions unique to specific places. In this context, comprehending customer sentiments is of paramount importance for business decision-making, menu choice offerings, marketing strategies, and customer service improvements. Traditional sentiment analysis methods in gastronomy tourism tend to be time-consuming, prone to human error, and influenced by subjectivity. Furthermore, the absence of an effective visualization strategy hampers the reliability of sentiment analysis efforts. Compounding this, the data collected also often lacked balance across sentiment classes, making it challenging to predict minority sentiments accurately. To address these challenges, our research introduces a hybrid approach, combining various lexicon-based sentiment and emotional analysis algorithms, thereby enhancing the reliability of customer review analysis in the gastronomy tourism sector. Subsequently, we optimize machine learning sentiment classification by employing data augmentation in conjunction with feature engineering strategies, to improve the recognition of minority sentiment classes. Additionally, we present a comprehensive business intelligence and visualization solution that is personalized for the gastronomy tourism industry in Sarawak and offers real-time sentiment visualization. The optimization of sentiment classification, achieved through the integration of synonym augmentation and n-gram feature engineering in conjunction with kNN classifiers, has yielded impressive results. This approach attains optimal classification performance, boasting an accuracy rate of 0.98, a F1-score and a ROC-AUC score of 0.99. Notably, this methodology significantly enhances the recognition of minority sentiment classes within the dataset, addressing the main challenges in this research.
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
2169-3536

2024
12

10.1109/ACCESS.2024.3362730
Computer Science; Engineering; Telecommunications
gold
WOS:001199995100001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001199995100001
title Enhancing Minority Sentiment Classification in Gastronomy Tourism: A Hybrid Sentiment Analysis Framework With Data Augmentation, Feature Engineering and Business Intelligence
title_short Enhancing Minority Sentiment Classification in Gastronomy Tourism: A Hybrid Sentiment Analysis Framework With Data Augmentation, Feature Engineering and Business Intelligence
title_full Enhancing Minority Sentiment Classification in Gastronomy Tourism: A Hybrid Sentiment Analysis Framework With Data Augmentation, Feature Engineering and Business Intelligence
title_fullStr Enhancing Minority Sentiment Classification in Gastronomy Tourism: A Hybrid Sentiment Analysis Framework With Data Augmentation, Feature Engineering and Business Intelligence
title_full_unstemmed Enhancing Minority Sentiment Classification in Gastronomy Tourism: A Hybrid Sentiment Analysis Framework With Data Augmentation, Feature Engineering and Business Intelligence
title_sort Enhancing Minority Sentiment Classification in Gastronomy Tourism: A Hybrid Sentiment Analysis Framework With Data Augmentation, Feature Engineering and Business Intelligence
container_title IEEE ACCESS
language English
format Article
description The gastronomy tourism industry plays an important role in boosting local economies, enhancing the travel experience, and preserving culinary traditions unique to specific places. In this context, comprehending customer sentiments is of paramount importance for business decision-making, menu choice offerings, marketing strategies, and customer service improvements. Traditional sentiment analysis methods in gastronomy tourism tend to be time-consuming, prone to human error, and influenced by subjectivity. Furthermore, the absence of an effective visualization strategy hampers the reliability of sentiment analysis efforts. Compounding this, the data collected also often lacked balance across sentiment classes, making it challenging to predict minority sentiments accurately. To address these challenges, our research introduces a hybrid approach, combining various lexicon-based sentiment and emotional analysis algorithms, thereby enhancing the reliability of customer review analysis in the gastronomy tourism sector. Subsequently, we optimize machine learning sentiment classification by employing data augmentation in conjunction with feature engineering strategies, to improve the recognition of minority sentiment classes. Additionally, we present a comprehensive business intelligence and visualization solution that is personalized for the gastronomy tourism industry in Sarawak and offers real-time sentiment visualization. The optimization of sentiment classification, achieved through the integration of synonym augmentation and n-gram feature engineering in conjunction with kNN classifiers, has yielded impressive results. This approach attains optimal classification performance, boasting an accuracy rate of 0.98, a F1-score and a ROC-AUC score of 0.99. Notably, this methodology significantly enhances the recognition of minority sentiment classes within the dataset, addressing the main challenges in this research.
publisher IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
issn 2169-3536

publishDate 2024
container_volume 12
container_issue
doi_str_mv 10.1109/ACCESS.2024.3362730
topic Computer Science; Engineering; Telecommunications
topic_facet Computer Science; Engineering; Telecommunications
accesstype gold
id WOS:001199995100001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001199995100001
record_format wos
collection Web of Science (WoS)
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