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Multiclass SVM-RFE for product form feature selection

机译:用于产品形式特征选择的多类SVM-RFE

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摘要

Various form features affect consumer preference regarding product design. It is, therefore, important that designers identify these critical form features to aid them in developing appealing products. However, the problems inherent in choosing product form features have not yet been intensively investigated. In this paper, an approach based on multiclass support vector machine recursive feature elimination (SVM-RFE) is proposed to streamline the selection of optimum product form features. First, a one-versus-one (OVO) multiclass fuzzy support vector machines (multiclass fuzzy SVM) model using a Gaussian kernel was constructed based on product samples from mobile phones. Second, an optimal training model parameter set was determined using two-step cross-validation. Finally, a multiclass SVM-RFE process was applied to select critical form features by either using overall ranking or class-specific ranking. The weight distribution of each iterative step can be used to analyze the relative importance of each of the form features. The results of our experiment show that the multiclass SVM-RFE process is not only very useful for identifying critical form features with minimum generalization errors but also can be used to select the smallest feature subset for building a prediction model with a given discrimination capability.
机译:各种表单特征会影响消费者对产品设计的偏好。因此,重要的是设计师必须确定这些关键的形式特征,以帮助他们开发有吸引力的产品。但是,尚未对选择产品形状特征所固有的问题进行深入研究。本文提出了一种基于多类支持向量机递归特征消除(SVM-RFE)的方法,以简化对最优产品形式特征的选择。首先,基于手机的产品样本,使用高斯核构建了一个一对一(OVO)多类模糊支持向量机(多类模糊SVM)模型。第二,使用两步交叉验证确定最佳训练模型参数集。最后,通过使用整体排名或特定类别的排名,将多类SVM-RFE流程应用于选择关键表单特征。每个迭代步骤的权重分布可用于分析每个表单特征的相对重要性。我们的实验结果表明,多类SVM-RFE过程不仅对于识别具有最小泛化误差的关键形式特征非常有用,而且可以用于选择最小特征子集以构建具有给定识别能力的预测模型。

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