Heterogeneous Graph Neural Networks for Large-Scale Bid Keyword Matching

Zongtao Liu, Bin Ma, Quanlian Liu, Jian Xu, Bo Zheng
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引用次数: 6

Abstract

Digital advertising is a critical part of many e-commerce platforms such as Taobao and Amazon. While in recent years a lot of attention has been drawn to the consumer side including canonical problems like ctr/cvr prediction, the advertiser side, which directly serves advertisers by providing them with marketing tools, is now playing a more and more important role. When speaking of sponsored search, bid keyword recommendation is the fundamental service. This paper addresses the problem of keyword matching, the primary step of keyword recommendation. Existing methods for keyword matching merely consider modeling relevance based on a single type of relation among ads and keywords, such as query clicks or text similarity, which neglects rich heterogeneous interactions hidden behind them. To fill this gap, the keyword matching problem faces several challenges including: 1) how to learn enriched and robust embeddings from complex interactions among various types of objects; 2) how to conduct high-quality matching for new ads that usually lack sufficient data. To address these challenges, we develop a heterogeneous-graph-neural-network-based model for keyword matching named HetMatch, which has been deployed both online and offline at the core sponsored search platform of Alibaba Group. To extract enriched and robust embeddings among rich relations, we design a hierarchical structure to fuse and enhance the relevant neighborhood patterns both on the micro and the macro level. Moreover, by proposing a multi-view framework, the model is able to involve more positive samples for cold-start ads. Experimental results on a large-scale industrial dataset as well as online AB tests exhibit the effectiveness of HetMatch.
大规模竞价关键字匹配的异构图神经网络
数字广告是淘宝和亚马逊等许多电子商务平台的重要组成部分。近年来,消费者端(包括ctr/cvr预测等典型问题)受到了很多关注,而广告商端(通过向广告商提供营销工具直接为其服务)正发挥着越来越重要的作用。说到赞助搜索,竞价关键词推荐是最基本的服务。本文解决了关键词匹配问题,这是关键词推荐的第一步。现有的关键词匹配方法仅仅考虑基于单一类型的广告和关键词之间的关联建模,如查询点击或文本相似度,而忽略了隐藏在它们背后的丰富的异构交互。为了填补这一空白,关键字匹配问题面临着几个挑战,包括:1)如何从各种类型对象之间的复杂交互中学习丰富和鲁棒的嵌入;2)如何对通常缺乏足够数据的新广告进行高质量匹配。为了解决这些挑战,我们开发了一个基于异构图神经网络的关键字匹配模型HetMatch,该模型已在阿里巴巴集团的核心赞助搜索平台线上和线下部署。为了在丰富关系中提取丰富的鲁棒嵌入,我们设计了一个层次结构,从微观和宏观两个层面融合和增强相关的邻域模式。此外,通过提出一个多视图框架,该模型能够涉及更多的冷启动广告的阳性样本。在大规模工业数据集和在线AB测试上的实验结果显示了HetMatch的有效性。
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