多点触控归因的因果注意模型

Sachin Kumar, Garima Gupta, Ranjitha Prasad, Arnab Chatterjee, L. Vig, Gautam M. Shroff
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引用次数: 6

摘要

广告渠道已经从传统的印刷媒体、广告牌和广播广告发展到在线数字广告(广告),用户通过社交网络、展示广告、搜索等渠道接触到一系列广告活动。当广告商重新审视广告活动的设计,以同时满足新广告渠道的需求时,广告商根据客户行为的顺序,估计不同渠道上的接触点(观看、点击、转化)的贡献也很重要。这种贡献测量过程通常被称为多点触控归因(MTA)。在这项工作中,我们提出了CAMTA,一种新的深度递归神经网络架构,它是观测数据背景下用户个性化MTA的因果归因机制。CAMTA最大限度地减少了跨时间步长和接触点的通道分配的选择偏差。此外,它以一种有原则的方式利用用户的预转换行为来预测每个渠道的归因。为了对提出的MTA模型进行定量基准测试,我们采用了真实世界的Criteo数据集,并与几个基线相比,证明了CAMTA在预测精度方面的优越性能。此外,我们还提供了预测渠道归属的预算分配和用户行为建模结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CAMTA: Causal Attention Model for Multi-touch Attribution
Advertising channels have evolved from conventional print media, billboards and radio-advertising to online digital advertising (ad), where the users are exposed to a sequence of ad campaigns via social networks, display ads, search etc. While advertisers revisit the design of ad campaigns to concurrently serve the requirements emerging out of new ad channels, it is also critical for advertisers to estimate the contribution from touch-points (view, clicks, converts) on different channels, based on the sequence of customer actions. This process of contribution measurement is often referred to as multi-touch attribution (MTA). In this work, we propose CAMTA, a novel deep recurrent neural network architecture which is a causal attribution mechanism for user-personalised MTA in the context of observational data. CAMTA minimizes the selection bias in channel assignment across time-steps and touchpoints. Furthermore, it utilizes the users' pre-conversion actions in a principled way in order to predict per-channel attribution. To quantitatively benchmark the proposed MTA model, we employ the real-world Criteo dataset and demonstrate the superior performance of CAMTA with respect to prediction accuracy as compared to several baselines. In addition, we provide results for budget allocation and user-behaviour modeling on the predicted channel attribution.
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