Lecturer of Tourism and Hotel management, School of Business and Communication Art, University of Phayao, Phayao Province, Thailand.
F1000Res. 2022 Nov 8;11:1269. doi: 10.12688/f1000research.123759.3. eCollection 2022.
The world economy was broken by the COVID-19 pandemic, which affected the coffee industry. The COVID-19 pandemic's financial effects might influence equity markets and personal lives. This includes financial commodities like coffee, which the pandemic is predicted to damage. Coffee tourism is an emerging new kind of tourism in Thailand, formed in response to growing demand from visitors with a particular affinity for the beverage. Coffee tourism may contribute considerably to the expansion of Thai tourism if given the proper guidance and assistance.
As part of a coffee tourism experience focusing on first-hand activities and information, tourists can visit neighbouring sites while on a coffee plantation. This research uses a stochastic neuro-fuzzy decision tree (SNF-DT) to analyse coffee tourism in Thailand. The research surveys 400 international and Thai coffee tourists. According to studies, Thai visitors mostly visit coffee tourism locations in Thailand for enjoyment. They also wanted to visit coffee fields in order to get personal knowledge of coffee production and marketing. Based on the comments of Thai visitors, coffee tourism in northern Thailand looks to be highly and effectively handled. Due to the same factor, responses from foreign coffee tourists indicated that many of their journeys to coffee tourism destinations were made entirely for enjoyment rather than the business. They also wanted to meet local tour guides and acquire handmade and locally produced things to understand more about coffee tourism.
According to study results, coffee tourism management in northern Thailand looks well-received by international tourists. We also compare the suggested model to the traditional one to demonstrate its efficacy. The performance metrics are prediction rate, prediction error, and accuracy. The estimated results for our proposed technique are prediction rate (95%), prediction error (97%), and accuracy (94%).
Major global businesses such as tourism have been harmed by COVID-19's unprecedented effects. This study attempts to determine the role of coffee tourism in livelihoods based on real-time data using a machine-learning approach. More research is needed to analyse the factors of the coffee tourism experience using different machine learning approaches.
新冠疫情重创世界经济,也冲击了咖啡产业。新冠疫情对金融市场和个人生活都产生了影响。这包括咖啡等金融商品,预计疫情将对其造成损害。咖啡旅游是泰国新兴的一种旅游形式,是为了满足对咖啡有特殊偏好的游客不断增长的需求而形成的。如果得到适当的引导和帮助,咖啡旅游可能会对泰国旅游业的发展做出重大贡献。
作为以亲身参与和信息获取为特色的咖啡旅游体验的一部分,游客可以在咖啡种植园内游览周边景点。本研究采用随机神经模糊决策树(SNF-DT)分析泰国的咖啡旅游。研究调查了 400 名国际和泰国咖啡游客。根据研究,泰国游客大多是为了享受而参观泰国的咖啡旅游地,他们还希望参观咖啡种植园,以获得有关咖啡生产和营销的个人知识。根据泰国游客的评价,泰国北部的咖啡旅游似乎得到了很好的处理。由于同样的原因,外国咖啡游客的反应表明,他们许多咖啡旅游目的地之旅完全是为了享受,而不是为了商务。他们还希望与当地导游会面,购买手工制作和本地生产的商品,以更好地了解咖啡旅游。
根据研究结果,泰国北部的咖啡旅游管理受到国际游客的欢迎。我们还将建议模型与传统模型进行比较,以展示其功效。性能指标是预测率、预测误差和准确率。我们提出的技术的估计结果是预测率(95%)、预测误差(97%)和准确率(94%)。
旅游业等全球主要行业受到新冠疫情前所未有的影响。本研究试图使用机器学习方法根据实时数据确定咖啡旅游在生计中的作用。需要更多的研究来使用不同的机器学习方法分析咖啡旅游体验的因素。