Inbound tourists segmentation with combined algorithms using K-Means and Decision Tree

Wirot Yotsawat, A. Srivihok
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引用次数: 5

Abstract

Tourism is one of the main industries which bring about monetary to its country. To survive in the competitive industries these tourism organizations must have innovative strategies to carry on their business. One of the tools is tourism market segmentation which is used for strategic planning. This study presents inbound tourist market segmentation with combined algorithms using K-Means and Decision Tree. The study was divided into two phases. In the clustering phase, the segmentation was performed by Self Organizing Map (SOM) and K-Means. SOM used for determining the appropriate number of cluster. Then, K-Means used for refined the tourist clusters. The results of clustering phase were analyzed. In the classification phase, three classifiers were compared the performances of predictability by using the output provided by K-Means, i.e. Decision Tree, NaYve Bayes and Multilayer Perceptron (MLP). The experimental results indicated that SOM provided 6 clusters and K-Means gave better performance than SOM guided by Silhouette, Root Means Square Standard Deviation (RMSSTD) and R Square (RS). The predictive ability of J48 Decision Tree outperformed both of MLP and NaYve Bayes based on the tourist variables. J48 Decision Tree indicated the accuracy as 99.54%. The results of this study can be used for tourism management products and services.
基于k均值和决策树的入境游客分割
旅游业是给国家带来经济收入的主要产业之一。为了在竞争激烈的行业中生存,这些旅游组织必须有创新的战略来开展业务。其中一个工具是旅游市场细分,用于战略规划。本文提出了基于k均值和决策树的入境旅游市场分割方法。研究分为两个阶段。在聚类阶段,采用自组织映射(SOM)和K-Means进行分割。SOM用于确定适当的集群数量。然后利用K-Means对旅游集群进行细化。对聚类阶段结果进行了分析。在分类阶段,使用K-Means提供的输出比较三种分类器的可预测性性能,即决策树,NaYve Bayes和多层感知器(MLP)。实验结果表明,SOM提供了6个聚类,K-Means比轮廓、均方根标准差(RMSSTD)和R平方(RS)引导的SOM具有更好的性能。J48决策树的预测能力优于基于旅游变量的MLP和NaYve Bayes。J48 Decision Tree的准确率为99.54%。本研究结果可用于旅游管理产品与服务。
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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