Promotions are becoming more important and prevalent in e-commerce to attract customers and boost sales, leading to frequent changes of occasions, which drives users to behave differently. In such situations, most existing Click-Through Rate (CTR) models can't generalize well to online serving due to distribution uncertainty of the upcoming occasion. In this paper, we propose a novel CTR model named MOEF for recommendations under frequent changes of occasions. Firstly, we design a time series that consists of occasion signals generated from the online business scenario. Since occasion signals are more discriminative in the frequency domain, we apply Fourier Transformation to sliding time windows upon the time series, obtaining a sequence of frequency spectrum which is then processed by Occasion Evolution Layer (OEL). In this way, a high-order occasion representation can be learned to handle the online distribution uncertainty. Moreover, we adopt multiple experts to learn feature representations from multiple aspects, which are guided by the occasion representation via an attention mechanism. Accordingly, a mixture of feature representations is obtained adaptively for different occasions to predict the final CTR. Experimental results on real-world datasets validate the superiority of MOEF and online A/B tests also show MOEF outperforms representative CTR models significantly.
翻译:促销在电子商务中变得越来越重要和普及,以吸引客户和提高销售额,导致用户行为发生变化。在这种情况下,由于即将到来的场景的分布不确定性,大多数现有的点击率(CTR)模型无法很好地推广到在线服务。因此,本文提出了一种新颖的用于推荐的CTR模型,名为MOEF,能够处理场景频繁变化的情况。首先,我们设计了一个时间序列,其中包含从在线业务场景生成的场景信号。由于场景信号在频域中更具区分度,因此我们对滑动时间窗口应用傅里叶变换,获得一系列频谱,然后通过场景演化层(OEL)进行处理。通过这种方式,可以学习到高阶场景表示,以处理在线分布不确定性。此外,我们采用多个专家从多个方面学习特征表示,通过关注机制由场景表示进行引导,因此可以自适应地获得混合特征表示,以预测最终CTR。对真实世界数据集进行的实验结果验证了MOEF的优越性,在线A / B测试也显示MOEF显著优于代表性CTR模型。