ECAT: A Entire space Continual and Adaptive Transfer Learning Framework for Cross-Domain Recommendation

Chaoqun Hou, Yuanhang Zhou, Yi Cao, Tong Liu
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Abstract

In industrial recommendation systems, there are several mini-apps designed to meet the diverse interests and needs of users. The sample space of them is merely a small subset of the entire space, making it challenging to train an efficient model. In recent years, there have been many excellent studies related to cross-domain recommendation aimed at mitigating the problem of data sparsity. However, few of them have simultaneously considered the adaptability of both sample and representation continual transfer setting to the target task. To overcome the above issue, we propose a Entire space Continual and Adaptive Transfer learning framework called ECAT which includes two core components: First, as for sample transfer, we propose a two-stage method that realizes a coarse-to-fine process. Specifically, we perform an initial selection through a graph-guided method, followed by a fine-grained selection using domain adaptation method. Second, we propose an adaptive knowledge distillation method for continually transferring the representations from a model that is well-trained on the entire space dataset. ECAT enables full utilization of the entire space samples and representations under the supervision of the target task, while avoiding negative migration. Comprehensive experiments on real-world industrial datasets from Taobao show that ECAT advances state-of-the-art performance on offline metrics, and brings +13.6% CVR and +8.6% orders for Baiyibutie, a famous mini-app of Taobao.
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ECAT:用于跨领域推荐的全空间持续自适应迁移学习框架
在工业推荐系统中,有多个迷你应用程序旨在满足用户的不同兴趣和需求。它们的样本空间只是整个空间的一个小子集,因此训练一个有效的模型具有挑战性。近年来,已经有许多与跨领域推荐相关的优秀研究,旨在缓解数据稀少的问题。然而,其中很少有研究同时考虑了样本和表示持续转移设置对目标任务的适应性。为了克服上述问题,我们提出了一个名为 ECAT 的实体空间持续和自适应转移学习框架,其中包括两个核心部分:首先,对于样本转移,我们提出了一种实现从粗到细过程的两阶段方法。具体来说,我们通过图引导方法进行初始选择,然后使用领域适应方法进行细粒度选择。其次,我们提出了一种自适应知识提炼方法,用于从在整个空间数据集上训练有素的模型中不断转移表征。ECAT 能够在目标任务的监督下充分利用整个空间样本和表征,同时避免负迁移。在淘宝网的真实工业数据集上进行的综合实验表明,ECAT 在离线指标上的性能达到了最先进水平,并为淘宝网著名的小程序百易购带来了 +13.6% 的 CVR 和 +8.6% 的订单量。
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