Evrim Buyukaslan Oosterom, Fatma Baytar, Deniz Akdemir, Fatma Kalaoglu
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Random Forest (RF), support vector machine (SVM), and conditional tree (CT) algorithms were used to learn from the data to predict participants’ RFSs. The mean correlations between the predicted and observed RFS values in the validation sets were 0.74 (RF), 0.70 (SVM-linear kernel), 0.72 (SVM-radial kernel), and 0.55 (CT). According to the variable importance analysis, VFS had the highest importance among 35 predictor variables. ML is used mostly for sales forecasting and manufacturing purposes in the fashion industry. However, garment fit, which restrains consumers from shopping online, did not get enough attention in ML studies. Besides, the ML algorithms used in fashion and apparel studies are often genetic algorithms and neural networks; therefore, there is a need to test other algorithm types. 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引用次数: 0
摘要
本研究的目的是应用其他机器学习(ML)算法来预测消费者的服装合身满意度(实际合身满意度 [RFS]),并比较这些算法预测 RFS 的效率。使用不同面料制作的裙子作为测试服装。裙子面料的机械性能被指定为估算 RFS 的预测变量。研究参与者的虚拟人体模型由三维人体扫描仪创建,并用于虚拟试穿。每位参与者都试穿了裙子,并对合身性进行了评估。参与者还可以在自己的化身上观看裙子的模拟效果,并对虚拟试穿效果进行评估,这代表了参与者的虚拟试穿满意度(VFS)。随机森林(RF)、支持向量机(SVM)和条件树(CT)算法被用来从数据中学习预测参与者的RFS。在验证集中,预测值与观察到的 RFS 值之间的平均相关性分别为 0.74(RF)、0.70(SVM 线性核)、0.72(SVM 径向核)和 0.55(CT)。根据变量重要性分析,在 35 个预测变量中,VFS 的重要性最高。ML 主要用于时装业的销售预测和生产目的。然而,服装合身度这一制约消费者网购的因素在 ML 研究中并未得到足够重视。此外,时尚和服装研究中使用的 ML 算法通常是遗传算法和神经网络,因此有必要测试其他类型的算法。在本研究中,我们提供了其他 ML 算法(即 RF、SVM 和 CT)来预测消费者的服装合身满意度。
Predicting consumers’ garment fit satisfactions by using machine learning
The objectives of this study were to apply alternative machine learning (ML) algorithms to predict consumers’ garment fit satisfactions (real fit satisfaction [RFS]) and compare the efficiencies of these algorithms to predict RFS. Skirts made from different fabrics were used as test garments. Mechanical properties of the skirts’ fabrics were assigned as predictor variables to estimate RFS. Study participants’ virtual body models were created by using 3D body scanner and used for virtual fitting. Each participant physically tried on the skirts and evaluated the fit. Participants also viewed the skirt simulations on their avatars and evaluated the virtual fit, which represented participants’ virtual fit satisfactions (VFS). Random Forest (RF), support vector machine (SVM), and conditional tree (CT) algorithms were used to learn from the data to predict participants’ RFSs. The mean correlations between the predicted and observed RFS values in the validation sets were 0.74 (RF), 0.70 (SVM-linear kernel), 0.72 (SVM-radial kernel), and 0.55 (CT). According to the variable importance analysis, VFS had the highest importance among 35 predictor variables. ML is used mostly for sales forecasting and manufacturing purposes in the fashion industry. However, garment fit, which restrains consumers from shopping online, did not get enough attention in ML studies. Besides, the ML algorithms used in fashion and apparel studies are often genetic algorithms and neural networks; therefore, there is a need to test other algorithm types. In this study, we offered alternative ML algorithms (i.e., RF, SVM, and CT) to predict consumers’ garment fit satisfactions.
期刊介绍:
Only few journals deal with textile research at an international and global level complying with the highest standards.
Autex Research Journal has the aim to play a leading role in distributing scientific and technological research results on textiles publishing original and innovative papers after peer reviewing, guaranteeing quality and excellence.
Everybody dedicated to textiles and textile related materials is invited to submit papers and to contribute to a positive and appealing image of this Journal.