GraphEx:基于图形的广告商关键词推荐提取方法

Ashirbad Mishra, Soumik Dey, Marshall Wu, Jinyu Zhao, He Yu, Kaichen Ni, Binbin Li, Kamesh Madduri
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引用次数: 0

摘要

网络卖家和广告商会收到针对其上市产品的关键字推荐,他们通过竞标来提高销售额。生成此类推荐的一种流行模式是极端多标签分类(XMC),它涉及将关键词标记/映射到项目。我们概述了在电子商务平台上使用基于项目查询的传统标记或映射技术进行关键词推荐的局限性。我们介绍了 GraphEx,这是一种基于图的创新方法,它通过从项目标题中提取标记排列向卖家推荐关键词。此外,我们还证明,在实际应用中,依赖精确度/召回率等传统指标可能会产生误导,因此有必要结合多种指标来评估实际场景中的性能。这些指标旨在评估关键词与项目的相关性以及买家拓展的潜力。GraphEx 优于 eBay 的生产模型,实现了上述目标。它支持在资源受限的生产环境中进行近乎实时的推理,并能有效地扩展到数以亿计的项目。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GraphEx: A Graph-based Extraction Method for Advertiser Keyphrase Recommendation
Online sellers and advertisers are recommended keyphrases for their listed products, which they bid on to enhance their sales. One popular paradigm that generates such recommendations is Extreme Multi-Label Classification (XMC), which involves tagging/mapping keyphrases to items. We outline the limitations of using traditional item-query based tagging or mapping techniques for keyphrase recommendations on E-Commerce platforms. We introduce GraphEx, an innovative graph-based approach that recommends keyphrases to sellers using extraction of token permutations from item titles. Additionally, we demonstrate that relying on traditional metrics such as precision/recall can be misleading in practical applications, thereby necessitating a combination of metrics to evaluate performance in real-world scenarios. These metrics are designed to assess the relevance of keyphrases to items and the potential for buyer outreach. GraphEx outperforms production models at eBay, achieving the objectives mentioned above. It supports near real-time inferencing in resource-constrained production environments and scales effectively for billions of items.
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