Predicting metrics associated with entities' transnational behavior within payment processing networks is essential for system monitoring. Multivariate time series, aggregated from the past transaction history, can provide valuable insights for such prediction. The general multivariate time series prediction problem has been well studied and applied across several domains, including manufacturing, medical, and entomology. However, new domain-related challenges associated with the data such as concept drift and multi-modality have surfaced in addition to the real-time requirements of handling the payment transaction data at scale. In this work, we study the problem of multivariate time series prediction for estimating transaction metrics associated with entities in the payment transaction database. We propose a model with five unique components to estimate the transaction metrics from multi-modality data. Four of these components capture interaction, temporal, scale, and shape perspectives, and the fifth component fuses these perspectives together. We also propose a hybrid offline/online training scheme to address concept drift in the data and fulfill the real-time requirements. Combining the estimation model with a graphical user interface, the prototype transaction metric estimation system has demonstrated its potential benefit as a tool for improving a payment processing company's system monitoring capability.
翻译:与实体在付款处理网络内的跨国行为有关的预测指标对于系统监测至关重要。根据过去交易历史汇总的多变时间序列可以为这种预测提供宝贵的见解。一般的多变时间序列预测问题已经得到很好的研究,并应用于几个领域,包括制造、医疗和昆虫学。然而,与数据有关的新的领域相关挑战,例如概念漂移和多模式,除了处理规模支付交易数据的实时要求外,还出现了处理数据中的概念漂移和满足实时要求的混合离线/在线培训计划。在这项工作中,我们研究了估算与支付交易数据库中实体有关的交易指标的多变数时间序列预测问题。我们提出了一个模型,其中含有五个独特的组成部分,用以根据多模式数据估算交易指标。其中四个组成部分收集互动、时间、规模和形状观点,以及第五组成部分将这些观点结合在一起。我们还提议了一个混合的离线/在线培训计划,以解决数据中的概念漂移问题,并满足实时要求。我们研究的是,将估算模型与图形用户界面结合起来,原型交易指标估计系统显示了它作为改进支付处理公司监测能力的工具的潜在好处。