As a critical component for online advertising and marking, click-through rate (CTR) prediction has draw lots of attentions from both industry and academia field. Recently, the deep learning has become the mainstream methodological choice for CTR. Despite of sustainable efforts have been made, existing approaches still pose several challenges. On the one hand, high-order interaction between the features is under-explored. On the other hand, high-order interactions may neglect the semantic information from the low-order fields. In this paper, we proposed a novel prediction method, named FINT, that employs the Field-aware INTeraction layer which captures high-order feature interactions while retaining the low-order field information. To empirically investigate the effectiveness and robustness of the FINT, we perform extensive experiments on the three realistic databases: KDD2012, Criteo and Avazu. The obtained results demonstrate that the FINT can significantly improve the performance compared to the existing methods, without increasing the amount of computation required. Moreover, the proposed method brought about 2.72\% increase to the advertising revenue of a big online video app through A/B testing. To better promote the research in CTR field, we will release our code as well as reference implementation of those baseline models in the final version.
翻译:作为在线广告和标识的一个关键组成部分,点击率(CTR)预测吸引了业界和学术界的大量关注。最近,深层次的学习已成为CTR的主要方法选择。尽管作出了可持续的努力,但现有办法仍构成若干挑战。一方面,各特征之间的高度互动没有得到充分探讨。另一方面,高端互动可能忽视了低级域的语义信息。在本文中,我们提议了一种新颖的预测方法,名为FINT,它利用外地认识的INTEAAD层,在保留低级域信息的同时,捕捉高级特征互动,成为CTR的主流方法。为了对FINT的有效性和稳健性进行实证调查,我们在三个现实数据库(KDDD2012、Criteo和Avazu)上进行了广泛的实验。获得的结果表明,与现有方法相比,FINT可以大大改进性能,而不会增加所需的计算量。此外,拟议的方法通过A/B测试,增加了一个大型在线视频应用程序的广告收入。为了更好地促进作为基准执行模式的研究,我们将在CTR实地发布这些基准模式。