Cross domain recommender system constitutes a powerful method to tackle the cold-start and sparsity problem by aggregating and transferring user preferences across multiple category domains. Therefore, it has great potential to improve click-through-rate prediction performance in online commerce platforms having many domains of products. While several cross domain sequential recommendation models have been proposed to leverage information from a source domain to improve CTR predictions in a target domain, they did not take into account bidirectional latent relations of user preferences across source-target domain pairs. As such, they cannot provide enhanced cross-domain CTR predictions for both domains simultaneously. In this paper, we propose a novel approach to cross-domain sequential recommendations based on the dual learning mechanism that simultaneously transfers information between two related domains in an iterative manner until the learning process stabilizes. In particular, the proposed Dual Attentive Sequential Learning (DASL) model consists of two novel components Dual Embedding and Dual Attention, which jointly establish the two-stage learning process: we first construct dual latent embeddings that extract user preferences in both domains simultaneously, and subsequently provide cross-domain recommendations by matching the extracted latent embeddings with candidate items through dual-attention learning mechanism. We conduct extensive offline experiments on three real-world datasets to demonstrate the superiority of our proposed model, which significantly and consistently outperforms several state-of-the-art baselines across all experimental settings. We also conduct an online A/B test at a major video streaming platform Alibaba-Youku, where our proposed model significantly improves business performance over the latest production system in the company.
翻译:跨域建议系统是解决冷启动和广度问题的有力方法,它汇集和转移多个类别域的用户偏好,从而解决冷启动和广度问题。 因此,它具有巨大的潜力,可以改进具有多个产品领域的在线商务平台的点击通过率预测绩效。 虽然已提出若干跨域顺序建议模型,以利用源域信息,改进目标域的CTR预测,但没有考虑到不同源目标域用户偏好的双向潜在双向关系。 因此,它们无法同时为这两个域提供强化的跨域CTR预测。 在本文件中,我们提出了一种新颖的方法,以基于双重学习机制的跨域顺序建议,在学习进程稳定之前,同时以迭接方式在两个相关域之间传递信息。 特别是,拟议的双轨连续连续学习模式(DASL)模式由两个新组成部分组成,它们共同建立了两阶段模式学习进程:我们首先为两个域同时获取用户偏好选择的双向级CTR,然后提供跨域的跨域序列建议,通过在两个相关深层嵌入的在线服务器上将一个在线嵌入式主机运行平台与我们最新的实验,同时展示了多个在线运行。 我们的在线在多个实验中,在多个实验中,在多个实验中,在多个实验中,在两个候选实验中,在两个测试项目中大幅展示了我们的拟议的连续运行中,在两个实验中,在两个实验中,在两个测试中,在两个测试中,在两个测试中,在两个测试项目中,我们方进行。