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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Analyzing imbalanced online consumer review data in product design using geometric semantic genetic programming
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Analyzing imbalanced online consumer review data in product design using geometric semantic genetic programming

机译:使用几何语义遗传编程分析产品设计中的不平衡在线消费者审查数据

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摘要

To develop a successful product, understanding the relationship between customer satisfaction (CS) and design attributes of a new product is essential. Nowadays IoT technologies are used to collect online review data from social media. More representative CS models are developed using online review data. However, online review data is imbalanced, since popular products receive more online consumer reviews and unpopular products receive less. When imbalanced data is used, CS models learn the characteristics of majority data while rarely learning minority data. Misleading analysis for product development is made since the CS model is biased to popular products. This paper proposes an approach to generate nondominated CS models which learn equally to imbalanced data from popular and unpopular products. A multi-objective optimization problem is formulated to learn equally in imbalanced data. This problem is proposed to be solved by the geometric semantic genetic programming (GSGP); a Pareto set of nondominated CS models is generated by the GSGP. Product designers select the most preferred models in the Pareto set. The preferred nondominated CS model attempts to tradeoff unpopular and popular products, to determine optimal design attributes and maximize the CS. The case study shows that the proposed GSGP is able to generate CS models with more accurate CS predictions compared to the commonly used methods. The proposed GSGP also generates a Pareto set of nondominated CS models which equally learn consumer reviews for those dryers. Based on the Pareto set, the design team selects the most preferred CS model.
机译:要开发成功的产品,了解客户满意度(CS)与新产品的设计属性之间的关系至关重要。如今,IOT技术用于从社交媒体收集在线审查数据。更多代表性的CS模型使用在线审阅数据开发。但是,在线评论数据是不平衡的,因为流行的产品获得更多在线消费者评论和不受欢迎的产品较少。当使用不平衡数据时,CS模型学习多数数据的特征,同时很少学习少数民族数据。自CS模型偏向流行产品以来,制造了产品开发的误导性分析。本文提出了一种方法来产生非统计的CS模型,该模型同样地学习到来自流行和不受欢迎的产品的不平衡数据。配制多目标优化问题以在不平衡数据中同样地学习。该问题被提出通过几何语义遗传编程(GSGP)来解决; GSGP生成了一组Nondominated CS模型。产品设计人员选择Pareto集中最优选的型号。优选的Nondominived CS模型试图对不受欢迎和流行的产品进行权衡,以确定最佳设计属性并最大化CS。案例研究表明,与常用的方法相比,所提出的GSGP能够以更准确的CS预测生成CS模型。该提议的GSGP还生成了一组Nondominived CS模型,同等地学习了那些干衣机的消费者评论。基于帕累托集,设计团队选择最优选的CS模型。

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