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Enhanced customer requirement classification for product design using big data and improved Kano model

机译:使用大数据和改进的Kano模型增强了产品设计的客户需求分类

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The classification of customer requirements (CRs) has a significant impact on the solution of product design. Existing CRs classification methods such as the Kano model and IPA model are time-consuming and inaccurate. This paper proposes a CRs classification method for product design using big data of online customer reviews of products to classify CRs accurately and efficiently. Comments of customer reviews are matched to CRs using a hierarchical semantic similarity method. Customer satisfaction degrees are defined based on emotional levels of adjectives and adverbs of customer comments using word vectors. The function implementation degree of each product is determined by specifications crawled from online products. Fitting curves are formed by defined customer satisfaction and function implementation of CRs using polynomial modeling and least square methods. Based on the slope of the fitted curves, CRs are classified to provide the minimum and maximum function implementations of CRs in each CR group to guide a product design process. The proposed method is applied in a case study of defining CRs classifications for design of upper limb rehabilitation devices. For verifying the proposed method, CRs defined by the existing methods are compared with CRs from the proposed method in design of an upper limb rehabilitation device.
机译:客户要求的分类(CRS)对产品设计的解决方案有重大影响。现有的CRS分类方法,如Kano模型和IPA模型是耗时和不准确的。本文提出了使用产品设计的大数据来提出产品设计的CRS分类方法,可准确,高效地对CRS进行分类。客户评论的评论与使用分层语义相似性方法匹配的CRS。客户满意度基于使用字矢量的客户评论的形容词和副词的情绪水平来定义。每个产品的功能实现程度由在线产品删除的规范确定。拟合曲线是通过使用多项式建模和最小二乘法的CRS的定义客户满意度和功能实现而形成的。基于拟合曲线的斜率,CRS分类为在每个CR组中提供CRS的最小和最大函数实现,以指导产品设计过程。所提出的方法应用于定义CRS分类的案例研究,用于设计上肢康复装置的设计。为了验证所提出的方法,将现有方法定义的CR与来自上肢康复装置的设计中所提出的方法的CRS进行比较。

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