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ProphetNet-Ads: A Looking Ahead Strategy for Generative Retrieval Models in Sponsored Search Engine

机译:ProphetNet-ADS:在赞助搜索引擎中寻找前瞻策略

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In a sponsored search engine, generative retrieval models are recently proposed to mine relevant advertisement keywords for users' input queries. Generative retrieval models generate outputs token by token on a path of the target library prefix tree (Trie), which guarantees all of the generated outputs are legal and covered by the target library. In actual use, we found several typical problems caused by Trie-constrained searching length. In this paper, we analyze these problems and propose a looking ahead strategy for generative retrieval models named ProphetNet-Ads. ProphetNet-Ads improves the retrieval ability by directly optimizing the Trie-constrained searching space. We build a dataset from a real-word sponsored search engine and carry out experiments to analyze different generative retrieval models. Compared with Trie-based LSTM generative retrieval model proposed recently, our single model result and integrated result improve the recall by 15.58% and 18.8% respectively with beam size 5. Case studies further demonstrate how these problems are alleviated by ProphetNet-Ads clearly.
机译:在赞助的搜索引擎中,最近提出了生成的检索模型来挖掘用户输入查询的相关广告关键字。生成检索模型在目标库前缀树(Trie)的路径上通过令牌生成输出令牌,保证所有生成的输出是合法的,由目标库覆盖。在实际使用中,我们发现了由Trie受约束的搜索长度引起的几个典型问题。在本文中,我们分析了这些问题,并提出了一个名为ProphetNet-ADS的生成检索模型的前进战略。 ProphetNet-ADS通过直接优化Trie受限搜索空间来提高检索能力。我们从实际主办的搜索引擎中建立一个数据集,并进行实验来分析不同的生成检索模型。与最近提出的TRIE的LSTM生成检索模型相比,我们的单一模型结果和综合结果分别将召回分别提高了15.58%和18.8%,分别与光束尺寸5.案例研究进一步展示了如何通过预言广告清楚地通过预言广告来缓解这些问题。

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