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Improving the stability of market segmentation analysis

机译:提高市场细分分析的稳定性

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PurposeData-driven market segmentation is heavily used by academic tourism and hospitality researchers to create knowledge and by data analysts in tourism industry to generate market insights. The stability of market segmentation solutions across repeated calculations is a key quality indicator of a segmentation solution. Yet, stability is typically ignored, risking that the segmentation solution arrived at is random. This study aims to offer an overview of market segmentation analysis and propose a new procedure to increase the stability of market segmentation solutions derived from binary data.Design/methodology/approachThe authors propose a new method - based on two independently proposed algorithms - to increase the stability of market segmentation solutions. They demonstrate the superior performance of the new method using empirical data.FindingsThe proposed approach uses k-means as base algorithm and combines the variable selection method proposed by Brusco (2004) with the global stability analysis introduced by Dolnicar and Leisch (2010). This new approach increases the stability of segmentation solutions by simultaneously selecting variables and numbers of segments.Practical implicationsThe new approach can be adopted immediately by academic researchers and industry data analysts alike to improve the quality of market segmentation solutions derived from empirical tourist data. Higher quality market segmentation solutions translate into competitive advantage and increased business or destination performance.Originality/valueThe proposed approach is newly developed in this study. It helps industry data analysts and academic researchers to reduce the risk of deriving random segmentation solutions by analyzing the data in a systematic way, then selecting the most stable solution using the segmentation variables contributing to this most stable solution only.
机译:Purpostata驱动的市场细分受到学术旅游和酒店研究人员的大量使用,以创造知识和旅游业数据分析师,以产生市场洞察力。跨重复计算的市场分割解决方案的稳定性是分割解决方案的关键质量指标。然而,通常忽略稳定性,冒着分割解决方案到达的是随机的。本研究旨在提供市场细分分析的概述,并提出了一种新的程序,以提高从二进制数据衍生的市场细分解决方案的稳定性.Design/Methodology/Approach本作者提出了一种新方法 - 基于两个独立提出的算法 - 增加市场细分解决方案的稳定性。它们展示了使用经验数据的新方法的卓越性能.Findingsthe所提出的方法使用K-means作为基础算法,并将Brusco(2004)提出的可变选择方法与Dolnicar和休息(2010)引入的全局稳定性分析相结合。这种新方法通过同时选择变量和分段数来增加分割解决方案的稳定性。可以通过学术研究人员和行业数据分析师立即采用新方法,以提高经验旅游数据的市场细分解决方案的质量。更高质量的市场细分解决方案转化为竞争优势和增加的业务或目的地表现。在本研究中新开发的方法/败志表。它可以帮助行业数据分析师和学术研究人员通过以系统方式分析数据来降低随机分割解决方案的风险,然后使用贡献这一最稳定的解决方案的分段变量选择最稳定的解决方案。

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