Department of Multimedia and Entertainment Science, Southern Taiwan University, Yongkang District, Tainan, ROC.
Appl Ergon. 2012 Nov;43(6):1072-80. doi: 10.1016/j.apergo.2012.03.008. Epub 2012 Apr 20.
Collecting affective responses (ARs) from consumers is crucial to designers aspiring to produce an appealing product. Adjectives are frequently used by researchers as an affective means by which consumers can describe their subjective feelings regarding a specific product design. This study proposes a Kansei engineering (KE) approach for selecting representative affective dimensions using factor analysis (FA) and Procrustes analysis (PA). A semantic differential (SD) experiment is used to examine consumers' ARs toward a set of representative product samples. FA is employed to extract the underlying latent factors using an initial set of affective dimensions. A backward elimination process based on PA is used to determine the relative significance of adjectives in each step according to the calculated residual sum of squared differences (RSSDs) to finally obtain the ranking of the initial set of adjectives. Additionally, the results of the proposed approach are compared to the method that combines FA and two-stage cluster analysis (CA). A case study of mobile phone design is provided to demonstrate the analysis results.
收集消费者的情感反应(ARs)对于渴望生产吸引人的产品的设计师来说至关重要。形容词经常被研究人员用作一种情感手段,消费者可以用它来描述他们对特定产品设计的主观感受。本研究提出了一种使用因素分析(FA)和普罗克鲁斯分析(PA)选择代表性情感维度的感性工程(KE)方法。语义差异(SD)实验用于检查消费者对一组代表性产品样本的 ARs。FA 用于使用初始情感维度集提取潜在的潜在因素。基于 PA 的后向消除过程根据计算的残差平方和(RSSD)在每个步骤中确定形容词的相对重要性,最终获得初始形容词集的排名。此外,还将所提出方法的结果与结合 FA 和两阶段聚类分析(CA)的方法进行了比较。提供了一个手机设计的案例研究来展示分析结果。