D3HDRS 方法:一种用于客户体验管理的新型聚类框架,以新兴市场电信业为例进行研究

IF 4 Q2 BUSINESS
Milton Soto-Ferrari, Odette Chams-Anturi, Juan P. Escorcia-Caballero
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引用次数: 0

摘要

在现代竞争激烈的商业环境中,掌握并改善客户体验对于企业脱颖而出、确保市场优势至关重要。因此,本文介绍了 D3HDRS 框架,这是一种创新的七阶段分层聚类方法,旨在从情感和品牌互动等多个维度对客户体验反馈进行定量分析,从而为战略性客户体验管理(CXM)建立详细的角色档案。D3HDRS 框架通过数据处理、描述性统计分析、维度分析、分层聚类、树枝图审查、雷达图可视化和细分客户概括分析等阶段,系统地对客户体验进行剖析和分类,以促进客户体验管理运营。本研究介绍了这一方法在哥伦比亚(一个新兴市场)电信服务提供商中的示范应用;通过利用 106 位客户的数据,我们最终确定了六种具有特定特征和属性的独特客户细分剖析。这项研究展示了 D3HDRS 框架在提供细致入微的客户洞察力方面的有效性,有助于制定针对每个客户特征的营销策略。通过详细介绍新兴市场背景下的案例研究,我们的研究结果强调了该框架的多功能性和在更广泛行业实施的潜力,为旨在完善客户体验管理战略的企业提供了一个战略性工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

The D3HDRS approach: a novel clustering framework for customer experience management with a case study in the telecom sector of an emergent market

The D3HDRS approach: a novel clustering framework for customer experience management with a case study in the telecom sector of an emergent market

In modern competitive business environments, mastering and improving customer experience is crucial for organizations to distinguish themselves and secure market advantage. Thus, this article introduces the D3HDRS framework, an innovative seven-stage hierarchical clustering approach designed to quantitatively analyze customer experience feedback arranged in multiple dimensions, such as emotions and brand interactions, to build detailed persona profiles for strategic customer experience management (CXM). The D3HDRS framework systematically progresses through the stages of data processing, descriptive statistical analysis, dimensional analysis, hierarchical clustering, dendrogram review, radar chart visualization, and segment profiling with customer generalization to dissect and classify customer experiences for CXM operations. This research presents an exemplary application of the method within a telecom service provider in Colombia, an emerging market; by leveraging data from 106 customers, we ultimately denote six unique customer segment profiles with their specific features and attributes. The study showcases the D3HDRS framework's effectiveness in delivering nuanced customer insights that facilitate the development of marketing strategies targeted to each customer profile. By detailing the case study in an emerging market context, our findings underscore the framework’s versatility and potential for broader industry implementation, providing a strategic tool for organizations aiming to refine CXM strategies.

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来源期刊
CiteScore
5.40
自引率
16.70%
发文量
46
期刊介绍: Data has become the new ore in today’s knowledge economy. However, merely storing and reporting are not enough to thrive in today’s increasingly competitive markets. What is called for is the ability to make sense of all these oceans of data, and to apply those insights to the way companies approach their markets, adjust to changing market conditions, and respond to new competitors. Marketing analytics lies at the heart of this contemporary wave of data driven decision-making. Companies can no longer survive when they rely on gut instinct to make decisions. Strategic leverage of data is one of the few remaining sources of sustainable competitive advantage. New products can be copied faster than ever before. Staff are becoming less loyal as well as more mobile, and business centers themselves are moving across the globe in a world that is getting flatter and flatter. The Journal of Marketing Analytics brings together applied research and practice papers in this blossoming field. A unique blend of applied academic research, combined with insights from commercial best practices makes the Journal of Marketing Analytics a perfect companion for academics and practitioners alike. Academics can stay in touch with the latest developments in this field. Marketing analytics professionals can read about the latest trends, and cutting edge academic research in this discipline. The Journal of Marketing Analytics will feature applied research papers on topics like targeting, segmentation, big data, customer loyalty and lifecycle management, cross-selling, CRM, data quality management, multi-channel marketing, and marketing strategy. The Journal of Marketing Analytics aims to combine the rigor of carefully controlled scientific research methods with applicability of real world case studies. Our double blind review process ensures that papers are selected on their content and merits alone, selecting the best possible papers in this field.
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