Modeling Spatiotemporal Heterogeneity of Customer Preferences in Engineering Design

Youyi Bi, Jian Xie, Zhenghui Sha, Mingxian Wang, Yan Fu, Wei Chen
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引用次数: 7

Abstract

Customer preferences are found to evolve over time and correlate with geographical locations. Studying spatiotemporal heterogeneity of customer preferences is crucial to engineering design as it provides a dynamic perspective for a thorough understanding of preference trend. However, existing analytical models for demand modeling do not take the spatiotemporal heterogeneity of customer preferences into consideration. To fill this research gap, a spatial panel modeling approach is developed in this study to investigate the spatiotemporal heterogeneity of customer preferences by introducing engineering attributes explicitly as model inputs in support of demand forecasting in engineering design. In addition, a step-by-step procedure is proposed to aid the implementation of the approach. To demonstrate this approach, a case study is conducted on small SUV in China’s automotive market. Our results show that small SUVs with lower prices, higher power, and lower fuel consumption tend to have a positive impact on their sales in each region. In understanding the spatial patterns of China’s small SUV market, we found that each province has a unique spatial specific effect influencing the small SUV demand, which suggests that even if changing the design attributes of a product to the same extent, the resulting effects on product demand might be different across different regions. In understanding the underlying social-economic factors that drive the regional differences, it is found that Gross Domestic Product (GDP) per capita, length of paved roads per capita and household consumption expenditure have significantly positive influence on small SUV sales. These results demonstrate the potential capability of our approach in handling spatial variations of customers for product design and marketing strategy development. The main contribution of this research is the development of an analytical approach integrating spatiotemporal heterogeneity into demand modeling to support engineering design.
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工程设计中客户偏好的时空异质性建模
顾客的偏好会随着时间的推移而变化,并与地理位置相关。研究顾客偏好的时空异质性对工程设计至关重要,因为它为深入了解顾客偏好趋势提供了一个动态的视角。然而,现有的需求建模分析模型并未考虑顾客偏好的时空异质性。为了填补这一研究空白,本研究开发了一种空间面板建模方法,通过将工程属性明确引入模型输入,以支持工程设计中的需求预测,来研究客户偏好的时空异质性。此外,还提出了一个循序渐进的程序,以协助执行该办法。为了证明这一方法,对中国汽车市场的小型SUV进行了案例研究。我们的研究结果表明,价格更低、功率更高、油耗更低的小型suv往往对其在各个地区的销售产生积极影响。在了解中国小型SUV市场的空间格局时,我们发现每个省份对小型SUV需求的空间特定效应都是独特的,这表明即使在相同程度上改变产品的设计属性,对产品需求的影响也可能在不同地区有所不同。在了解驱动区域差异的潜在社会经济因素后,我们发现人均国内生产总值(GDP)、人均铺砌道路长度和家庭消费支出对小型SUV销量有显著的正向影响。这些结果表明,我们的方法在处理客户的空间变化,为产品设计和营销策略的发展的潜在能力。本研究的主要贡献是开发了一种分析方法,将时空异质性整合到需求建模中,以支持工程设计。
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