In order to steer e-commerce users towards making a purchase, marketers rely upon predictions of when users exit without purchasing. Previously, such predictions were based upon hidden Markov models (HMMs) due to their ability of modeling latent shopping phases with different user intents. In this work, we develop a duration-dependent hidden Markov model. In contrast to traditional HMMs, it explicitly models the duration of latent states and thereby allows states to become "sticky". The proposed model is superior to prior HMMs in detecting user exits: out of 100 user exits without purchase, it correctly identifies an additional 18. This helps marketers in better managing the online behavior of e-commerce customers. The reason for the superior performance of our model is the duration dependence, which allows our model to recover latent states that are characterized by a distorted sense of time. We finally provide a theoretical explanation for this, which builds upon the concept of "flow".
翻译:为了引导电子商务用户进行购买,市场商依赖对用户在不购买的情况下退出时的预测。以前,这种预测是基于隐藏的Markov模型(HMMs),因为它们能够以不同的用户意图模拟潜在的购物阶段。在这项工作中,我们开发了一个依赖时间的隐藏Markov模型。与传统的HMs相比,它明确地模拟了潜伏状态的持续时间,从而允许国家成为“粘土 ” 。在检测用户退出时,拟议的模型优于以前的HMMs:在100个用户退出而没有购买的情况下,它正确地确定了另外18个18个。这帮助了市场商更好地管理电子商务客户的在线行为。我们模型的优性表现是因为对时间的依赖,使我们的模式能够恢复以扭曲的时间感为特征的潜伏状态。我们最后从理论上解释了这一点,它建立在“流动”的概念上。