从支付数据集中挖掘支付意愿行为模式

Y. Wen, Hui-Kuo Yang, Wen-Chih Peng
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引用次数: 0

摘要

客户基础是电子商务企业最宝贵的资源。全面了解客户的偏好和行为对于制定良好的营销策略至关重要,以实现最佳的客户终身价值(clv)。例如,通过探索客户行为模式,给定有限预算的营销计划,可以识别一组潜在客户以实现利润最大化。换句话说,在合适的时间和地点进行个性化活动,可以被视为消费的最后阶段。此外,有效的未来购买预测和推荐有助于引导客户进入向上销售阶段。所提出的支付意愿预测模型(W2P)基于概率图模型,利用交易数据预测客户的支付行为,为预测结果提供语义解释,并处理来自每个客户的支付数据的稀疏性。该领域的现有工作根据客户在不同条件下的购买概率对其进行排序。然而,拥有最高购买概率的顾客并不一定花费最多。因此,我们提出了一种基于预测结果的CLV最大化算法。此外,我们通过行为分割对模型进行改进,根据支付行为对客户进行分组,以减少离线模型的规模,提高对低频客户的准确性。实验结果表明,我们的模型在购买行为预测方面优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Willing-to-Pay Behavior Patterns from Payment Datasets
The customer base is the most valuable resource to E-commerce companies. A comprehensive understanding of customers’ preferences and behavior is crucial to developing good marketing strategies, in order to achieve optimal customer lifetime values (CLVs). For example, by exploring customer behavior patterns, given a marketing plan with a limited budget, a set of potential customers is able to be identified to maximize profit. In other words, personalized campaigns at the right time and in the right place can be treated as the last stage of consumption. Moreover, effective future purchase estimation and recommendation help guide the customer to the up-selling stage. The proposed willing-to-pay prediction model (W2P) exploits the transaction data to predict customer payment behavior based on a probabilistic graphical model, which provides semantic explanation of the estimated results and deals with the sparsity of payment data from each customer. Existing work in this domain ranks the customers by their probabilities of purchase in different conditions. However, the customer with the highest purchase probability does not necessarily spend the most. Therefore, we propose a CLV maximization algorithm based on the prediction results. In addition, we improve the model by behavioral segmentation wherein we group the customers by payment behaviors to reduce the size of the offline models and enhance the accuracy for low-frequency customers. The experiment results show that our model outperforms the state-of-the-art methods in purchase behavior prediction.
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