Aspect-Based Sentiment Analysis in Bromo Tengger Semeru National Park Indonesia Based on Google Maps User Reviews

Cynthia As Bahri, Lya Hulliyyatus Suadaa
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引用次数: 1

Abstract

Technology can influence and shape a person's behavior patterns when planning tours, traveling, and after traveling. Visitors' reviews can be used as evaluation material to improve the quality of tourist destinations and become a determining factor for other tourists to visit or revisit the destinations. The process of utilizing these reviews can be done by assessing the aspects of tourist destinations based on reviews from visitors. This study aims to conduct an aspect-based sentiment analysis on one of the tourist destinations in Indonesia, namely Bromo Tengger Semeru National Park, based on reviews of Google Maps users. The aspects consist of attractions, facilities, access, and price. The sentiment classification model used is a machine learning model consisting of SVM, Complement Naïve Bayes, Logistic Regression, and transfer learning from pre-trained BERT, IndoBERT, and mBERT. Based on the experimental results, transfer learning from the IndoBERT model achieved the best performance with accuracy and F1-Score of 91.48% and 71.56%, respectively. In addition, among the machine learning models used, the SVM model gives the best results with an accuracy of 89.16% and an F1-Score of 62.23%.
基于谷歌地图用户评论的印尼Bromo Tengger sememeru国家公园面向方面的情感分析
技术可以影响和塑造一个人在计划旅行、旅行和旅行后的行为模式。游客的评价可以作为提高旅游目的地质量的评估材料,并成为其他游客访问或重新访问目的地的决定因素。利用这些评论的过程可以通过根据游客的评论评估旅游目的地的各个方面来完成。本研究旨在根据谷歌地图用户的评论,对印度尼西亚的一个旅游目的地,即Bromo Tengger Semeru国家公园进行基于方面的情绪分析。这些方面包括景点、设施、通道和价格。所使用的情绪分类模型是一个机器学习模型,由SVM、互补朴素贝叶斯、逻辑回归和来自预训练的BERT、IndoBERT和mBERT的迁移学习组成。基于实验结果,IndoBERT模型的迁移学习取得了最佳性能,准确率和F1得分分别为91.48%和71.56%。此外,在所使用的机器学习模型中,SVM模型给出了最好的结果,准确率为89.16%,F1得分为62.23%。
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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