当前位置: X-MOL 学术arXiv.cs.GL › 论文详情
Our official English website, www.x-mol.net, welcomes your feedback! (Note: you will need to create a separate account there.)
User Response Prediction in Online Advertising
arXiv - CS - General Literature Pub Date : 2021-01-07 , DOI: arxiv-2101.02342
Zhabiz Gharibshah, Xingquan Zhu

Online advertising, as the vast market, has gained significant attention in various platforms ranging from search engines, third-party websites, social media, and mobile apps. The prosperity of online campaigns is a challenge in online marketing and is usually evaluated by user response through different metrics, such as clicks on advertisement (ad) creatives, subscriptions to products, purchases of items, or explicit user feedback through online surveys. Recent years have witnessed a significant increase in the number of studies using computational approaches, including machine learning methods, for user response prediction. However, existing literature mainly focuses on algorithmic-driven designs to solve specific challenges, and no comprehensive review exists to answer many important questions. What are the parties involved in the online digital advertising eco-systems? What type of data are available for user response prediction? How to predict user response in a reliable and/or transparent way? In this survey, we provide a comprehensive review of user response prediction in online advertising and related recommender applications. Our essential goal is to provide a thorough understanding of online advertising platforms, stakeholders, data availability, and typical ways of user response prediction. We propose a taxonomy to categorize state-of-the-art user response prediction methods, primarily focus on the current progress of machine learning methods used in different online platforms. In addition, we also review applications of user response prediction, benchmark datasets, and open-source codes in the field.

中文翻译:

在线广告中的用户响应预测

在线广告作为一个广阔的市场,已在搜索引擎,第三方网站,社交媒体和移动应用程序等各种平台中引起了广泛关注。在线广告活动的繁荣是在线营销中的一个挑战,通常通过用户通过不同指标(例如广告(ad)广告的点击,产品订阅,商品购买或通过在线调查获得的明确反馈)的响应来评估。近年来,使用计算方法(包括机器学习方法)进行用户响应预测的研究数量显着增加。然而,现有文献主要集中在算法驱动的设计上以解决特定的挑战,并且没有全面的综述来回答许多重要的问题。在线数字广告生态系统涉及哪些各方?哪些类型的数据可用于用户响应预测?如何以可靠和/或透明的方式预测用户响应?在本次调查中,我们对在线广告和相关推荐程序中的用户响应预测进行了全面回顾。我们的基本目标是全面了解在线广告平台,利益相关者,数据可用性以及用户响应预测的典型方式。我们提出了一种分类法,以对最新的用户响应预测方法进行分类,主要集中在不同在线平台上使用的机器学习方法的最新进展。此外,我们还将在现场审查用户响应预测,基准数据集和开源代码的应用。
更新日期:2021-01-08
down
wechat
bug