论文标题
改编的树木用于转移学习
Adapted tree boosting for Transfer Learning
论文作者
论文摘要
安全在线交易是电子商务平台的重要任务。 Alipay是世界领先的无现金支付平台之一,为商人和个人客户提供了付款服务。欺诈检测模型的建立是为了保护客户,但是新场景提出了更强大的需求,而新场景缺乏培训数据和标签。提出的模型通过在相似的旧场景下利用数据来有所作为,而新场景下的数据被视为要促进的目标域。受到支撑件的真实情况的启发,我们将问题视为转移学习问题,并设计了一组修订策略,将源域模型转移到梯度增强树模型的框架下。这项工作为启动和数据共享问题提供了一种选择。
Secure online transaction is an essential task for e-commerce platforms. Alipay, one of the world's leading cashless payment platform, provides the payment service to both merchants and individual customers. The fraud detection models are built to protect the customers, but stronger demands are raised by the new scenes, which are lacking in training data and labels. The proposed model makes a difference by utilizing the data under similar old scenes and the data under a new scene is treated as the target domain to be promoted. Inspired by this real case in Alipay, we view the problem as a transfer learning problem and design a set of revise strategies to transfer the source domain models to the target domain under the framework of gradient boosting tree models. This work provides an option for the cold-starting and data-sharing problems.