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A Method of Modeling of Basic Big Data Analysis for Korean Medical Tourism: A Machine Learning Approach Using Apriori Algorithm

机译:一种韩国医疗旅游基本大数据分析建模方法:一种使用APRiori算法的机器学习方法

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The Republic of Korea (ROK) has emerged as a country of superior medical tourism in the last decade among the people of China, Japan, Southeast Asia, Russia and the Middle East for the plastic surgery or others requiring precision skills. Although the ROK's medical tourism industry grew quantitatively in its revenue and the number of visitors, the report from the 2015 World Economic Forum concerning the competitiveness of ROK's tourism including the medical tourism showed that its rank had dropped to 29th position, a drop of 4 places from 25th in 2013. Thus, it is about time to improve the situation by investigating the actual conditions of tours taken by the foreign tourists to establish new strategy, which is the main contribution of this research. As a research method, a big data analysis has been performed on the basis of machine learning and using R-studio. During the analysis process, there were some relevant regularities which were difficult to be found in the big data and based on these findings, we have attempted to find the solutions for the bad images that foreign visitors had shared in common. The result of the big data analysis showed that the their purpose of visit was different from each other depending on the age groups and the details of their experience of inconvenience varied as well.
机译:大韩民国(韩国)已成为中国,日本,东南亚,俄罗斯人民的过去十年的卓越医疗旅游,为整形手术或其他需要精确技能的其他人。虽然韩国的医疗旅游业在其收入和游客人数中大幅增长,但2015年世界经济论坛的报告有关韩国旅游业的竞争力,却在包括医疗旅游在内的竞争力的情况表明,其等级跌至第29次,这是一滴4个地方从2013年25日起。因此,通过调查外国游客采取的旅游的实际条件来建立新的战略,这是提高局势的时间,这是这项研究的主要贡献。作为研究方法,已经基于机器学习和使用R-Studio进行了大数据分析。在分析过程中,在大数据中难以找到一些相关规律,并根据这些发现,我们试图找到外国游客共同分享的坏图像的解决方案。大数据分析的结果表明,他们的访问目的彼此不同,具体取决于年龄组,以及他们不便的经验的细节也各种各样。

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