基于使用数据挖掘从在线评论中提取的客户体验维度的市场细分

IF 2.7 Q2 BUSINESS
Shweta Pandey, N. Pandey, Deepak Chawla
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引用次数: 0

摘要

目的本研究旨在开发一种实用有效的方法,利用来自在线评论的客户体验维度进行市场细分。设计/方法/方法本研究采用潜狄利克雷分配(Latent Dirichlet allocation, LDA)数据挖掘方法,调查了台湾Yelp平台上超过6,500家餐饮企业的顾客评价。聚类分析利用lda导出的经验维度,揭示市场细分。随后,使用情绪分析来仔细检查每个片段的情绪得分。发现挖掘在线评论数据有助于辨别不同的和新的客户体验维度,并阐明在这些维度上确定的客户群之间的不同偏好。此外,不同细分市场的消费者所表达的情绪也各不相同。研究局限性/启示分析从在线评论中提取的客户属性进行细分可以增强对客户需求的理解。此外,使用情感分析和在线评论的属性,可以对已识别的细分市场进行丰富的分析,为营销人员揭示差距和机会。原创性/价值本研究提出了一种新的分割方法,它超越了基于调查信息的分割方法的局限性。它为该领域做出了贡献,并为进行以客户为中心的市场细分提供了有价值的手段。此外,建议的方法可在不同部门之间转移,不依赖于特定的数据源,从而在不同的情况下创造可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Market segmentation based on customer experience dimensions extracted from online reviews using data mining
Purpose This study aims to develop a practical and effective approach for market segmentation using customer experience dimensions derived from online reviews. Design/methodology/approach The research investigates over 6,500 customer evaluations of food establishments on Taiwan’s Yelp platform through the Latent Dirichlet allocation (LDA) data mining approach. By using the LDA-derived experience dimensions, cluster analysis discloses market segments. Subsequently, sentiment analysis is used to scrutinize the emotional scores of each segment. Findings Mining online review data helps discern divergent and new customer experience dimensions and sheds light on the divergent preferences among identified customer segments concerning these dimensions. Moreover, the polarity of sentiments expressed by consumers varies across such segments. Research limitations/implications Analyzing customer attributes extracted from online reviews for segmentation can enhance comprehension of customers’ needs. Further, using sentiment analysis and attributes of online reviews result in rich profiling of the identified segments, revealing gaps and opportunities for marketers. Originality/value This research presents a new approach to segmentation, which surmounts the restrictions of segmentation methods dependent on survey-based information. It contributes to the field and provides a valuable means for conducting customer-focused market segmentation. Furthermore, the suggested methodology is transferable across different sectors and not reliant on particular data sources, creating possibilities in diverse scenarios.
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来源期刊
Journal of Consumer Marketing
Journal of Consumer Marketing Business, Management and Accounting-Business and International Management
CiteScore
5.00
自引率
7.10%
发文量
68
期刊介绍: ■Consumer behaviour ■Customer policy and service ■Practical case studies to illustrate concepts ■The latest thinking and research in marketing planning ■The marketing of services worldwide
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