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Analyzing Temporal Dynamics of Consumer's Behavior Based on Hierarchical Time-Rescaling

机译:基于分层时间标度的消费者行为时间动态分析

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摘要

Improvements in information technology have made it easier for industry to communicate with their customers, raising hopes for a scheme that can estimate when customers will want to make purchases. Although a number of models have been developed to estimate the time-varying purchase probability, they are based on very restrictive assumptions such as preceding purchase-event dependence and discrete-time effect of covariates. Our preliminary analysis of real-world data finds that these assumptions are invalid: self-exciting behavior, as well as marketing stimulus and preceding purchase dependence, should be examined as possible factors influencing purchase probability. In this paper, by employing the novel idea of hierarchical time rescaling, we propose a tractable but highly flexible model that can meld various types of intrinsic history dependency and marketing stimuli in a continuous-time setting. By employing the proposed model, which incorporates the three factors, we analyze actual data, and show that our model has the ability to precisely track the temporal dynamics of purchase probability at the level of individuals. It enables us to take effective marketing actions such as advertising and recommendations on timely and individual bases, leading to the construction of a profitable relationship with each customer.
机译:信息技术的进步使行业更容易与客户进行沟通,从而使人们希望建立一种可以估计客户何时进行购买的方案。尽管已经开发了许多模型来估计随时间变化的购买概率,但它们基于非常严格的假设,例如先前的购买事件依赖性和协变量的离散时间效应。我们对现实世界数据的初步分析发现,这些假设是无效的:应将自我激励行为以及营销刺激和先前的购买依赖性作为影响购买可能性的可能因素进行研究。在本文中,通过采用分层时间重新调整的新颖思想,我们提出了一种易于处理但高度灵活的模型,该模型可以在连续时间内设置各种类型的内在历史依赖关系和营销刺激。通过采用提出的模型,其中包含了三个因素,我们分析了实际数据,并表明我们的模型具有精确地跟踪个人水平上购买概率的时间动态的能力。它使我们能够及时有效地采取有效的营销措施,例如广告和推荐,并与每个客户建立有利可图的关系。

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