Unravelling the potential of social media data analysis to improve the warranty service operation

Z. Sarmast, Sajjad Shokouhyar, S. Ghanadpour, Sina Shokoohyar
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引用次数: 1

Abstract

PurposeWarranty service plays a critical role in sustainability and service continuity and influences customer satisfaction. Considering the role of social networks in customer feedback channels, one of the essential sources to examine the reflection of a product/service is social media mining. This paper aims to identify the frequent product failures through social network mining. Focusing on social media data as a comprehensive and online source to detect warranty issues reveals opportunities for improvement, such as user problems and necessities. This model will detect the causes of defects and prioritize improving components in a product-service system based on FMEA results.Design/methodology/approachOntology-based methods, text mining and sentiment analysis with machine learning methods are performed on social media data to investigate product defects, symptoms and the relationship between warranty plans and customer behaviour. Also, the authors have incorporated multi-source data collection to cover all the possibilities. Then the authors promote a decision support system to help the decision-makers using the FMEA process have a more comprehensive insight through customer feedback. Finally, to validate the accuracy and reliability of the results, the authors used the operational data of a LENOVO laptop from a warranty service centre and classifier performance metrics to compare the authors’ results.FindingsThis study confirms the validity of social media data in detecting customer sentiments and discovering the most defective components and failures of the products/services. In other words, the informative threads are derived through a data preparation process and then are based on analyzing the different features of a failure (issues, symptoms, causes, components, solutions). Using social media data helps gain more accurate online information due to the limitation of warranty periods. In other words, using social media data broadens the scope of data gathering and lets in all feedback from different sources to recognize improvement opportunities.Originality/valueThis work contributes a DSS model using multi-channel social media mining through supervised machine learning for warranty-service improvement based on defect-related discovery to unravel the potential aspects of social networks analysis to predict the most vulnerable components of a product and the main causes of failures that lead to the inputs for the FMEA process and then, a cost optimization. The authors have used social media channels like Twitter, Facebook, Reddit, LENOVO Forums, GitHub, Quora and XDA-Developers to gather data about the LENOVO laptop failures as a case study.
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挖掘社交媒体数据分析的潜力,改善保修服务运营
目的保证服务对企业的可持续性和服务连续性起着至关重要的作用,并影响着客户满意度。考虑到社交网络在客户反馈渠道中的作用,检验产品/服务反映的重要来源之一是社交媒体挖掘。本文旨在通过社交网络挖掘来识别频繁的产品故障。将社交媒体数据作为全面的在线资源来检测保修问题,可以发现改进的机会,例如用户问题和需求。该模型将检测缺陷的原因,并根据FMEA结果优先改进产品服务系统中的组件。基于本体的方法、文本挖掘和带有机器学习方法的情感分析在社交媒体数据上执行,以调查产品缺陷、症状以及保修计划与客户行为之间的关系。此外,作者还结合了多源数据收集,以涵盖所有可能性。在此基础上,提出了一个决策支持系统,通过客户反馈,帮助决策者对FMEA流程进行更全面的洞察。最后,为了验证结果的准确性和可靠性,作者使用了保修服务中心的一台联想笔记本电脑的运行数据和分类器性能指标来比较作者的结果。本研究证实了社交媒体数据在检测客户情绪和发现产品/服务中最缺陷的组件和故障方面的有效性。换句话说,信息性线程是通过数据准备过程派生出来的,然后基于对故障的不同特征(问题、症状、原因、组件、解决方案)的分析。由于保修期的限制,使用社交媒体数据有助于获得更准确的在线信息。换句话说,使用社交媒体数据扩大了数据收集的范围,并允许来自不同来源的所有反馈来识别改进机会。原创性/价值本工作提供了一个DSS模型,该模型使用多渠道社交媒体挖掘,通过监督机器学习进行基于缺陷相关发现的保修服务改进,以揭示社交网络分析的潜在方面,以预测产品最脆弱的组件和导致FMEA流程输入的主要故障原因,然后进行成本优化。作者利用Twitter、Facebook、Reddit、联想论坛、GitHub、Quora和XDA-Developers等社交媒体渠道收集联想笔记本电脑故障的数据作为案例研究。
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