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Rough set and PSO-based ANFIS approaches to modeling customer satisfaction for affective product design

机译:粗糙集和基于PSO的ANFIS方法可为情感产品设计建模客户满意度

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摘要

Facing fierce competition in marketplaces, companies try to determine the optimal settings of design attribute of new products from which the best customer satisfaction can be obtained. To determine the settings, customer satisfaction models relating affective responses of customers to design attributes have to be first developed. Adaptive neuro-fuzzy inference systems (ANFIS) was attempted in previous research and shown to be an effective approach to address the fuzziness of survey data and nonlinearity in modeling customer satisfaction for affective design. However, ANFIS is incapable of modeling the relationships that involve a number of inputs which may cause the failure of the training process of ANFIS and lead to the 'out of memory' error. To overcome the limitation, in this paper, rough set (RS) and particle swarm optimization (PSO) based-ANFIS approaches are proposed to model customer satisfaction for affective design and further improve the modeling accuracy. In the approaches, the RS theory is adopted to extract significant design attributes as the inputs of ANFIS and PSO is employed to determine the parameter settings of an ANFIS from which explicit customer satisfaction models with better modeling accuracy can be generated. A case study of affective design of mobile phones is used to illustrate the proposed approaches. The modeling results based on the proposed approaches are compared with those based on ANFIS, fuzzy least-squares regression (FLSR), fuzzy regression (FR), and genetic programming-based fuzzy regression (GP-FR). Results of the training and validation tests show that the proposed approaches perform better than the others in terms of training and validation errors.
机译:面对激烈的市场竞争,公司试图确定新产品设计属性的最佳设置,从中可以获得最佳的客户满意度。为了确定设置,必须首先开发将客户的情感响应与设计属性相关联的客户满意度模型。自适应神经模糊推理系统(ANFIS)在先前的研究中曾尝试过,并被证明是一种有效的方法来解决调查数据的模糊性和在为情感设计建模客户满意度时的非线性问题。但是,ANFIS无法对涉及大量输入的关系进行建模,这可能会导致ANFIS的训练过程失败并导致“内存不足”错误。为了克服这一局限性,本文提出了基于粗糙集(RS)和粒子群优化(PSO)的ANFIS方法来对情感设计的客户满意度进行建模,并进一步提高建模精度。在这些方法中,采用RS理论提取重要的设计属性作为ANFIS的输入,而PSO用于确定ANFIS的参数设置,从中可以生成具有更好建模精度的显式客户满意度模型。以手机情感设计为例,说明了所提出的方法。将基于所提出方法的建模结果与基于ANFIS,模糊最小二乘回归(FLSR),模糊回归(FR)和基于遗传编程的模糊回归(GP-FR)的建模结果进行比较。训练和验证测试的结果表明,在训练和验证错误方面,所提出的方法比其他方法表现更好。

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