Enhancing the analysis of online product reviews to support product improvement: integrating text mining with quality function deployment

Mehdi Rajabi Asadabadi, Morteza Saberi, N. S. Sadghiani, O. Zwikael, Elizabeth Chang
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引用次数: 2

Abstract

PurposeThe purpose of this paper is to develop an effective approach to support and guide production improvement processes utilising online product reviews.Design/methodology/approachThis paper combines two methods: (1) natural language processing (NLP) to support advanced text mining to increase the accuracy of information extracted from product reviews and (2) quality function deployment (QFD) to utilise the extracted information to guide the product improvement process.FindingsThe paper proposes an approach to automate the process of obtaining voice of the customer (VOC) by performing text mining on available online product reviews while considering key factors such as the time of review and review usefulness. The paper enhances quality management processes in organisations and advances the literature on customer-oriented product improvement processes.Originality/valueOnline product reviews are a valuable source of information for companies to capture the true VOC. VOC is then commonly used by companies as the main input for QFD to enhance quality management and product improvement. However, this process requires considerable time, during which VOC may change, which may negatively impact the output of QFD. This paper addresses this challenge by providing an improved approach.
增强对在线产品评论的分析以支持产品改进:将文本挖掘与质量功能部署集成在一起
本文的目的是开发一种有效的方法来支持和指导利用在线产品评论的生产改进过程。设计/方法/方法本文结合了两种方法:(1)自然语言处理(NLP)支持高级文本挖掘,以提高从产品评审中提取信息的准确性;(2)质量功能部署(QFD)利用提取的信息指导产品改进过程。本文提出了一种方法,通过对可用的在线产品评论进行文本挖掘,同时考虑评论时间和评论有用性等关键因素,实现获取客户声音(VOC)的自动化过程。本文增强了组织的质量管理过程,并推进了以客户为导向的产品改进过程的文献。原创/价值在线产品评论是公司获取真正VOC的宝贵信息来源。然后,公司通常使用挥发性有机化合物作为QFD的主要输入,以加强质量管理和产品改进。然而,这个过程需要相当长的时间,在此期间VOC可能会发生变化,这可能会对QFD的输出产生负面影响。本文通过提供一种改进的方法来解决这一挑战。
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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