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A Data-Driven Approach to Reverse Engineering Customer Engagement Models: Towards Functional Constructs

机译:反向工程客户参与模型的数据驱动方法:面向功能构造

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摘要

Online consumer behavior in general and online customer engagement with brands in particular, has become a major focus of research activity fuelled by the exponential increase of interactive functions of the internet and social media platforms and applications. Current research in this area is mostly hypothesis-driven and much debate about the concept of Customer Engagement and its related constructs remains existent in the literature. In this paper, we aim to propose a novel methodology for reverse engineering a consumer behavior model for online customer engagement, based on a computational and data-driven perspective. This methodology could be generalized and prove useful for future research in the fields of consumer behaviors using questionnaire data or studies investigating other types of human behaviors. The method we propose contains five main stages; symbolic regression analysis, graph building, community detection, evaluation of results and finally, investigation of directed cycles and common feedback loops. The ‘communities’ of questionnaire items that emerge from our community detection method form possible ‘functional constructs’ inferred from data rather than assumed from literature and theory. Our results show consistent partitioning of questionnaire items into such ‘functional constructs’ suggesting the method proposed here could be adopted as a new data-driven way of human behavior modeling.
机译:互联网和社交媒体平台及应用程序的交互功能呈指数级增长,从总体上讲,在线消费者的行为,尤其是与品牌的在线客户互动,已成为研究活动的主要重点。当前在该领域的研究主要是假设驱动的,并且关于顾客参与的概念及其相关构造的许多争论在文献中仍然存在。在本文中,我们旨在基于计算和数据驱动的观点,提出一种用于反向工程设计在线行为的消费者行为模型的新颖方法。这种方法可以被推广,并证明对于使用问卷数据的消费者行为领域的未来研究或调查其他类型人类行为的研究非常有用。我们提出的方法包括五个主要阶段:符号回归分析,图形构建,社区检测,结果评估,最后是有向环和常见反馈环的调查。从我们的社区检测方法中得出的问卷项目的“社区”构成了可能的“功能结构”,这些“功能结构”是根据数据推断出来的,而不是根据文献和理论得出的。我们的结果表明,将调查表项目一致地划分为此类“功能结构”,表明此处提出的方法可以用作数据驱动的人类行为建模的新方法。

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