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Product Form Feature Selection for Mobile Phone Design Using LS-SVR and ARD

机译:使用LS-SVR和ARD进行手机设计的产品形式特征选择

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In the product design field, it is important to pin point critical product form features (PFFs) that influence consumers' affective responses (CARs) of a product design. In this paper, an approach based on least squares support vector regression (LS-SVR) and automatic relevance determination (ARD) is proposed to streamline the task of product form feature selection (PFFS) according to the CAR data. The representation of PFFs is determined by morphological analysis and pairwise adjectives are used to express CARs. In order to gather the CAR data, an experiment of semantic differential (SD) evaluation on collected product samples was conducted. The LS-SVR prediction model can be constructed using the PFFs as input data and the evaluated SD scores as output value. The optimal parameters of the LS-SVR model are tuned by using Bayesian inference. Finally, an ARD selection process is used to analyze the relative relevance of PFFs to obtain feature ranking.
机译:在产品设计领域,重要的是要找出影响消费者对产品设计的情感反应(CAR)的关键产品外形特征(PFF)。本文提出了一种基于最小二乘支持向量回归(LS-SVR)和自动相关性确定(ARD)的方法,以根据CAR数据简化产品形态特征选择(PFFS)的任务。 PFF的表示通过形态分析确定,成对形容词用于表达CAR。为了收集CAR数据,对收集的产品样本进行了语义差异(SD)评估的实验。可以使用PFF作为输入数据并使用评估的SD分数作为输出值来构建LS-SVR预测模型。 LS-SVR模型的最佳参数通过贝叶斯推理进行调整。最后,使用ARD选择过程来分析PFF的相对相关性以获得特征排名。

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