汽车服务顾问大数据分析中的客户满意度和服务体验

Syahrul Nizam Samsudin, B. Abdullah, Noriah Yusoff
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摘要

汽车服务中心的服务顾问在提供优质服务方面扮演着重要的角色。汽车服务中心必须采用大数据应用,通过及时收集数据和科学分析来了解客户需求。本文的目的是通过基于大数据分析的在线调查来评估客户满意度(CS)和服务顾问体验(SAE)分数。因此,在确定改进活动的焦点区域时应用四分图。大数据在线调查平台的应用是收集客户反馈以进行持续改进活动的有效途径。该研究的重点是服务顾问(SA)服务在马来西亚选定一个汽车品牌。它解释了客户流程和客户满意度的定义,通过比较高密度的客户区域,即中部,北部和南部地区与低密度的客户区域,即东海岸和东马来西亚地区。输出分为客户数据整合、客户选择、调查执行、得分计算和分析报告五个步骤。因此,大数据应用分析期望SA差距并提出推荐行动。在线调查结果显示,客户满意度最低为879.90分,而服务顾问体验最低为73%。SA在表现礼貌和专业方面得分很高,而缺乏视觉检查是所有地区的主要差距。使用Quadrifid图进行详细分析,南方地区记录的相关性最低,r平方值小于0.1,CS和SAE水平低于平均值800,与SA对需求的响应有关。在本文中,执行的结果是客户信息的集中,服务水平协议标准,客户处理规范和工作效率的提高。这些指标决定了服务助理在管理客户期望方面的专业性。
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Customer Satisfaction and Service Experience in Big Data Analytics for Automotive Service Advisor
Service Advisor in Automotive Service Centre plays an important role as the frontline in providing exceptional services. The automotive service centre has to adopt big data applications in understanding customers’ needs by collecting data promptly and analysing scientifically. The objective of this paper is to evaluate Customer Satisfaction (CS) and Service Advisor Experience (SAE) scores via an online survey based on big data analytics. Thus, applying a Quadrifid graph in identifying focus regions for improvement activities. The application of big data online survey platforms is an efficient way of gathering customer feedback for continuous improvement activities. The study focused on Service Advisor (SA) services throughout Malaysia with selected one automotive brand. It explains the definition of customer process and customer satisfaction by comparing high-density customer regions namely Central, Northern and Southern regions with low-density customer regions namely East Coast and East Malaysia regions. There are five steps in deriving the output, which are the consolidation of customer data, customer selection, survey execution, score calculation and analytical report. Thus, the big data applications analyse the expectation SA gap and propose recommendation actions. The online survey results achieved a minimum of 879.90 points for Customer Satisfaction while Service Advisor Experience was minimum at 73%. SA achieved a high score for portraying courtesy and professionalism, while a lack of performing the visual inspection is the main gap for all regions. Detailed analysis using Quadrifid graph interpreted Southern region recorded the lowest correlation with R-square value less than 0.1 and level of CS & SAE below the average value of 800 relates to response towards needs by SA. In this paper, the outcome of the execution is centralization of customer information, Service Level Agreement standard, customer handling norms and work efficiency improvement. Such indicators lead to the SA’s professionalism in managing customer expectations.
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