动态感知质量分析使用社会媒体数据在宏观和微观层面

Tong Yang, Yanzhong Dang, Jiangning Wu
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引用次数: 2

摘要

本文旨在提出一种利用社交媒体数据进行动态产品感知质量分析的方法,实现宏微观结合分析。该方法支持感知质量属性的优先级,并提供感知原因。设计/方法学/方法为使宏微观组合合理化,采用方差分析和多元线性回归分析确定影响感知质量的主要因素,作为组合依据;利用消费者细分的组合基础,通过基于词频-逆文档频率(TF-IDF)的属性重要性计算和基于kano的属性分类,结合微观质量诊断信息(即感知质量、感知原因和质量参数),获得宏观知识(即属性重要度和属性质量类别)。在此基础上,建立了动态感知重要性-性能分析(IPA)模型,分析属性优先级和感知原因。通过汽车之家的新能源汽车数据验证了该框架的有效性。结果表明,价格和购买目的是影响感知质量的最主要因素,动态感知IPA可以有效地对属性进行优先排序并挖掘感知原因。原创性/价值这是最早利用社交媒体数据分析动态感知质量的研究之一,有助于感知质量的研究。本文还通过实现感知质量的宏观-微观综合分析做出了贡献。该方法通过识别影响感知质量的因素,使宏观与微观的结合更加合理化,为其他利用社交媒体数据的研究提供思路。
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Dynamic perceived quality analysis using social media data at macro- and micro-levels
PurposeThis paper aims to propose a method for dynamic product perceived quality analysis using social media data and to achieve a macro–micro combination analysis. The method enables the prioritization of perceived quality attributes and provides perception causes.Design/methodology/approachTo rationalize the macro–micro combination, ANOVA and multiple linear regression were used to identify the main factors affecting perceived quality which served as the combination basis; by using the combination basis for consumer segmentation, macro-knowledge (i.e. attribute importance and quality category of the attribute) is achieved by term frequency-inverse document frequency (TF-IDF)-based attribute importance calculation and KANO-based attribute classification, which is combined with micro-quality diagnostic information (i.e. perceived quality, perception causes and quality parameters). Further, dynamic perception Importance-Performance Analysis (IPA) is built to present the attribute priority and perception causes.FindingsThe framework was validated by the new energy vehicle (NEV) data of Autohome. The results show that price and purchase purpose are the most influential factors of perceived quality and that dynamic perception IPA can effectively prioritize attributes and mine perception causes.Originality/valueThis is one of the first studies to analyze dynamic perceived quality using social media data, which contributes to the research on perceived quality. The paper also contributes by achieving a combined macro–micro analysis of perceived quality. The method rationalizes the macro–micro combination by identifying the factors influencing perceived quality, which provides ideas for other studies using social media data.
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