分级旅游场所数量增加的贝叶斯网络模型设计

Tshepo Mothoagae, N. Joseph
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引用次数: 2

摘要

对旅游场所的分级进行了研究,但对利用人工智能(AI)增加分级旅游场所数量的研究很少。本研究的目的是找出影响旅游分级的变量,并利用这些变量来构建一个增加旅游设施数量的贝叶斯模型。使用survey Monkey工具开发的在线调查问卷收集数据。共收到87份回复,分别来自60家未评级及27家评级旅游机构。结果显示影响旅游定级的六个因素,即定级成本、定级效益、定级申请程序的简单性/复杂性、政府资助、定级申请人的培训和计算机能力。结果进一步表明,分级成本和分级效益是增加旅游设施数量的最重要因素。该研究表明,使用该模型将有助于评级专业人员对旨在增加评级旅游机构数量的举措做出明智的决策。这项研究是首批利用人工智能增加旅游评级机构的研究之一。
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The Design of a Bayesian Network Model for Increasing the Number of Graded Tourism Establishments
Research has been conducted on the grading of tourism establishments but little research has been conducted on the implementation of Artificial Intelligence (AI) to increase the number of graded tourism establishments. The objective of this study was to identify variables influencing tourism grading and to use them to construct a Bayesian Model for increasing the number of tourism establishments. Data was collected using an online survey questionnaire developed using the Survey Monkey tool. A total of 87 responses were received from 60 non-graded and 27 graded tourism establishments. The results indicate six factors affecting tourism grading, namely cost of grading, grading benefits, simplicity/complexity of grading application process, government funding, training of prospective grading applicants and computer literacy. The results further indicate grading cost and grading benefits as the most important factors for increasing the number of tourism establishments. The study implies that using this model will assist grading professionals to make informed decisions on initiatives aimed at increasing the number of graded tourism establishments. The study is among the first on implementation of AI to increase tourism grading establishments.
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