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MOBIUS: Towards the Next Generation of Query-Ad Matching in Baidu's Sponsored Search

机译:Mobius:在百度的赞助搜索中迈出下一代查询广告匹配

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摘要

Baidu runs the largest commercial web search engine in China, serving hundreds of millions of online users every day in response to a great variety of queries. In order to build a high-efficiency sponsored search engine, we used to adopt a three-layer funnel-shaped structure to screen and sort hundreds of ads from billions of ad candidates subject to the requirement of low response latency and the restraints of computing resources. Given a user query, the top matching layer is responsible for providing semantically relevant ad candidates to the next layer, while the ranking layer at the bottom concerns more about business indicators (e.g., CPM, ROI, etc.) of those ads. The clear separation between the matching and ranking objectives results in a lower commercial return. The Mobius project has been established to address this serious issue. It is our first attempt to train the matching layer to consider CPM as an additional optimization objective besides the query-ad relevance, via directly predicting CTR (click-through rate) from billions of queryad pairs. Specifically, this paper will elaborate on how we adopt active learning to overcome the insufficiency of click history at the matching layer when training our neural click networks offline, and how we use the SOTA ANN search technique for retrieving ads more efficiently (Here "ANN" stands for approximate nearest neighbor search). We contribute the solutions to Mobius-V1 as the first version of our next generation query-ad matching system.
机译:百度在中国运行了最大的商业网络搜索引擎,每天为数亿位的在线用户提供响应各种各样的疑问。为了建立一个高效的赞助商搜索引擎,我们曾经采用三层漏斗形结构来筛选,从数十亿广告候选中排出数百个广告,这可能需要低响应延迟和计算资源的束缚。给定用户查询,顶部匹配层负责向下一层提供语义相关的广告候选,而底部的排名层有关这些广告的商业指标(例如,CPM,ROI等)更多。匹配和排名目标之间的明确分离导致商业返回较低。 Mobius项目已经成立,以解决这一严重问题。除了查询 - 广告相关性之外,我们首次尝试将CPM视为额外的优化目标,通过直接预测来自数十亿的Queryad对中的CTR(点击率)。具体而言,本文将详细阐述我们如何在培训我们的神经点击网络脱机时克服匹配层的点击历史记录的不足,以及我们如何使用SOTA ANN搜索技术更有效地检索广告(这里“ANN”代表近似最近的邻权搜索)。我们为Mobius-V1的解决方案贡献为下一代查询广告匹配系统的第一个版本。

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