Predicting and determining antecedent factors of tourist village development using naive bayes and tree algorithm

N. Ariyani, A. Fauzi, Farhat Umar
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引用次数: 1

Abstract

This study aims to predict the progress status of tourism villages in the Kedung Ombo area, Java, Indonesia, and find the antecedent factors of the progress of tourism villages in Indonesia. This study uses a modern approach, namely data mining. Data sources for tourist villages use the data available on the Google link and the observation method. The prediction technique uses the Naïve Bayes machine learning algorithm and Tree Decision on Orange 3.3.0 software. The number of tourist villages analyzed was 126. The results showed that all tourist villages in the Kedung Ombo area were at the development level of the four tourist village classifications of the Ministry of Tourism and Creative Economy. The antecedent factors for the progress of tourism villages are the completeness of ICT facilities, multi-stakeholder partnerships, strong government support, community involvement, and various attractions. Another finding is that the Tree Decision algorithm provides better predictions than the Naïve Bayes method. The results of this study can be used to design policies for developing tourist villages throughout Indonesia.
利用朴素贝叶斯和树算法预测和确定旅游村发展的先行因素
本研究旨在预测印尼爪哇Kedung Ombo地区旅游村的发展状况,并找出印尼旅游村发展的先行因素。本研究采用了一种现代方法,即数据挖掘。旅游村的数据来源使用谷歌链接上的数据和观察方法。预测技术使用了Naive Bayes机器学习算法和Orange 3.3.0软件上的树决策。分析的旅游村数量为126个。结果表明,Kedung-Ombo地区的所有旅游村都处于旅游和创意经济部四个旅游村分类的发展水平。旅游村发展的先行因素是信息和通信技术设施的完整性、多方利益相关者的伙伴关系、强有力的政府支持、社区参与和各种景点。另一个发现是,树决策算法比朴素贝叶斯方法提供了更好的预测。这项研究的结果可用于设计在印度尼西亚各地发展旅游村的政策。
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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24 weeks
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