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Combining multiple correspondence analysis with association rule mining to conduct user-driven product design of wearable devices

机译:将多个对应关系分析与关联规则挖掘相结合,以进行用户驱动的可穿戴设备产品设计

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摘要

In recent years, the popularity of smart phones has boomed the emergence of wearable devices like wristband, smart watch, and sport watch since these devices are portable to record human body information, synchronize information with smart phones, and conduct real-time monitoring of physical condition. However, a recent survey indicates that near 70% respondents are not interested in buying Apple's new iWatch although the marketplace is full of competing alternatives like Samsung's Gear fit, LG's G watch, and Sony's SW3. In this study, a novel framework combining multiple correspondence analysis (MCA), association rule mining (ARM), with if nearest neighbor (KNN) is proposed to help brand companies address the following issues: (1) using MCA to explore the latent relationships between users' demographic profiles, user perceptions of design attributes, and user preferences for wearable devices, (2) using ARM to identify key design attributes that can best configure a specific alternative to achieve effective product differentiation (positioning), (3) using KNN to accomplish efficient product selection (recommendation). More importantly, hundreds of consumers are surveyed to justify the validity of the presented framework.
机译:近年来,智能手机的普及推动了腕带,智能手表和运动手表等可穿戴设备的出现,因为这些设备可便携式记录人体信息,与智能手机同步信息以及对身体进行实时监控。健康)状况。但是,最近的一项调查表明,尽管市场上充满了三星的Gear fit,LG的G手表和索尼的SW3等竞争产品,但仍有近70%的受访者对购买苹果的新款iWatch不感兴趣。在这项研究中,提出了一个新颖的框架,该框架结合了多重对应分析(MCA),关联规则挖掘(ARM)和最近邻(KNN)来帮助品牌公司解决以下问题:(1)使用MCA探索潜在关系用户的人口统计资料,用户对可穿戴设备的设计属性的理解以及用户对可穿戴设备的偏好之间的关系,(2)使用ARM识别可以最佳配置特定替代方案以实现有效的产品差异化(定位)的关键设计属性,(3)使用KNN完成有效的产品选择(推荐)。更重要的是,对数百名消费者进行了调查,以证明所提出框架的有效性。

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