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首页> 外文期刊>Journal of Mechanical Science and Technology >Elicitation of design factors through big data analysis of online customer reviews for washing machines
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Elicitation of design factors through big data analysis of online customer reviews for washing machines

机译:通过对洗衣机的在线客户评论的大数据分析来引发设计因素

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摘要

The volume of online consumer-generated content, such as opinions, personal feelings, and design requirements continually increases. However, the analysis of the large quantity of data available is not systematic, and customers' opinions and requirements are not properly utilized in product design. In this study, big data on customers' experience with front loading washers, represented by reviews and ratings on the BestBuy website, were collected and used to analyze the relationship between the customers' experience and the associated satisfaction by using text analytics. Words related to customer satisfaction that occurred frequently in the reviews were extracted, and the most significant words among them were selected as inputs for finding the major factors relevant to washer design by performing factor analysis. The influence of each factor was quantitatively estimated through linear regression analysis. This shows that the quantitatively elicited customer information from the big data can provide insights for new washing machine design.
机译:在线消费者生成的内容(例如意见,个人感受和设计要求)不断增加。但是,对可用的大量数据的分析不是系统的,并且在产品设计中没有正确使用客户的意见和要求。在这项研究中,收集了由Bestbuy网站的前置装载垫圈的客户经验的大数据被收集并用于通过使用文本分析来分析客户经验与相关满意之间的关系。提取了与审查中经常发生的客户满意度相关的单词,并选择了它们中最重要的单词作为通过进行因子分析来查找与垫圈设计相关的主要因素的输入。通过线性回归分析定量估计每个因素的影响。这表明,来自大数据的定量引发客户信息可以为新的洗衣机设计提供见解。

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