Customer Feedback Analysis Using Text Mining

Kinnari Mishra, Mansi Vegad
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Abstract

Complexity surrounding the holistic nature of customer experience has made measuring customer perceptions of interactive service experiences challenging. At the same time, advances in technology and changes in methods for collecting explicit customer feedback are generating increasing volumes of unstructured textual data, making it difficult for managers to analyze and interpret this information. Consequently, text mining, a method enabling automatic extraction of information from textual data, is gaining in popularity. However, this method has performed below expectations in terms of depth of analysis of customer experience feedback and accuracy. In this study, we advance linguistics-based text mining modeling to inform the process of developing an improved framework. The proposed framework incorporates important elements of customer experience, service methodologies and theories such as co-creation processes, interactions and context. This more holistic approach for analyzing feedback facilitates a deeper analysis of customer feedback experiences, by encompassing three value creation elements: activities, resources, and context (ARC). Empirical results show that the ARC framework facilitates the development of a text mining model for analysis of customer textual feedback that enables companies to assess the impact of interactive service processes on customer experiences. The proposed text mining model shows high accuracy levels and provides flexibility through training. As such, it can evolve to account for changing contexts over time and be deployed across different (service) business domains; we term it an “open learning” model. The ability to timely assess customer experience feedback represents a pre-requisite for successful co-creation processes in a service environment.
利用文本挖掘分析客户反馈
客户体验的整体性十分复杂,因此衡量客户对互动服务体验的感知具有挑战性。与此同时,技术的进步和收集明确客户反馈的方法的改变正在产生越来越多的非结构化文本数据,这给管理者分析和解释这些信息带来了困难。因此,文本挖掘这种能够从文本数据中自动提取信息的方法越来越受欢迎。然而,就客户体验反馈分析的深度和准确性而言,这种方法的表现低于预期。在本研究中,我们推进了基于语言学的文本挖掘建模,为开发改进框架的过程提供信息。建议的框架包含了客户体验、服务方法和理论的重要元素,如共同创造过程、互动和语境。这种更全面的反馈分析方法包含三个价值创造要素:活动、资源和情境(ARC),有助于对客户反馈体验进行更深入的分析。实证结果表明,ARC 框架有助于开发用于分析客户文本反馈的文本挖掘模型,使企业能够评估互动服务流程对客户体验的影响。所提出的文本挖掘模型显示出较高的准确性,并通过训练提供了灵活性。因此,它可以随着时间的推移不断发展,以适应不断变化的环境,并可在不同的(服务)业务领域部署;我们将其称为 "开放式学习 "模型。及时评估客户体验反馈的能力是在服务环境中成功开展共同创造流程的先决条件。
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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