多目标规则优化器及其在风险管理中的应用

P. Pulkkinen, Neetesh Tiwari, Akhil Kumar, Christopher Jones
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引用次数: 2

摘要

管理风险对任何电子商务商家来说都很重要。将各种机器学习(ML)模型与规则集相结合作为决策层是管理风险的常用实践。与可以根据新的风险模式定期自动刷新的ML模型不同,规则通常是静态的,依赖于手动更新。为了解决这个问题,本文提出了一种数据驱动的自动规则优化方法,该方法生成多个pareto最优规则集,表示业务目标之间的不同权衡。这使得业务所有者在为不断变化的业务需求和风险选择优化的规则集时能够做出明智的决策。此外,大大减少了规则管理中的手工工作。对于可伸缩性,这种方法利用Apache Spark,可以在单个主机上运行,也可以在云中的分布式环境中运行。这允许我们在训练期间使用数百万个事务、数百个变量和数百条规则以分布式方式执行优化。所提出的方法是通用的,但我们将其用于优化现实世界的电子商务(Amazon)风险规则集。它也可以用于其他领域,如金融和医药。
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A Multi-objective Rule Optimizer with an Application to Risk Management
Managing risk is important to any E-commerce merchant. Various machine learning (ML) models combined with a rule set as the decision layer is a common practice to manage the risks. Unlike the ML models that can be automatically refreshed periodically based on new risk patterns, rules are generally static and rely on manual updates. To tackle that, this paper presents a data-driven and automated rule optimization method that generates multiple Pareto-optimal rule sets representing different trade-offs between business objectives. This enables business owners to make informed decisions when choosing between optimized rule sets for changing business needs and risks. Furthermore, manual work in rule management is greatly reduced. For scalability this method leverages Apache Spark and runs either on a single host or in a distributed environment in the cloud. This allows us to perform the optimization in a distributed fashion using millions of transactions, hundreds of variables and hundreds of rules during the training. The proposed method is general but we used it for optimizing real-world E-commerce (Amazon) risk rule sets. It could also be used in other fields such as finance and medicine.
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