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Speaking with Actions - Learning Customer Journey Behavior

机译:与行动说 - 学习客户旅程行为

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To provide intelligent care, effortless experience and promote customer loyalty, it is essential that companies understand customer behavior and predict customer needs. Customers “speak” to companies through a sequence of interactions across different care channels. Companies can benefit from listening to this speech. We use the term customer journey to refer to the aggregated sequence of interactions that a customer has with a company. Most existing research focuses on data visualization, descriptive analysis, and obtaining managerial hints from studying customer journeys. In contrast, the goal of this paper is to predict future customer interactions within a certain period based on omni-channel journey data. To this end, we introduce a new abstract concept called “action” to describe customers' daily behavior. Using LSTM and DNN, we propose a systematic two-step framework based on omni-channel care journey data and customer profile data. The framework enables us to perform “action embedding”, which learns vector representations of actions. Our framework predicts whether or not a customer will contact in the time period directly following the recent contacts. Comparing the performance on large-scale real datasets to other machine learning techniques such as logistic regression and random forest, our approach yields superior results. In addition, we further cluster the action embedding learned by our model and investigate the intrinsic properties of customer behavior.
机译:为提供智能护理,轻松的经验和促进客户忠诚度,公司必须了解客户行为并预测客户需求。客户“通过各种护理渠道的一系列互动来向公司发言。公司可以从倾听这一演讲中受益。我们使用客户旅程术语来指代客户与公司具有的汇总互动序列。大多数现有的研究侧重于数据可视化,描述性分析,并从学习客户旅程中获取管理提示。相比之下,本文的目标是在基于全频道旅程数据的一段时间内预测未来的客户交互。为此,我们介绍了一个名为“动作”的新抽象概念来描述客户的日常行为。使用LSTM和DNN,我们提出了一种基于Omni-Channel Care旅程数据和客户资料数据的系统两步框架。该框架使我们能够执行“动作嵌入”,从而了解动作的矢量表示。我们的框架预测客户是否会在最近的联系人之后直接联系。将大型实体数据集的性能与其他机器学习技术进行比较,如逻辑回归和随机森林,我们的方法产生了卓越的结果。此外,我们还进一步集成了我们模型学习的动作嵌入,并调查客户行为的内在属性。

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