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Rare Query Expansion Through Generative Adversarial Networks in Search Advertising

机译:通过在搜索广告中通过生成对冲网络进行罕见的查询扩展

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摘要

Generative Adversarial Networks (GAN) have achieved great success in generating realistic synthetic data like images, tags, and sentences. We explore using GAN to generate bid keywords directly from query in sponsored search ads selection, especially for rare queries. Specifically, in the query expansion (query-keyword matching) scenario in search advertising, we train a sequence to sequence model as the generator to generate keywords, conditioned on the user query, and use a recurrent neural network model as the discriminator to play an adversarial game with the generator. By applying the trained generator, we can generate keywords directly from a given query, so that we can highly improve the effectiveness and efficiency of query-keyword matching based ads selection in search advertising. We trained the proposed model in the clicked query-keyword pair dataset from a commercial search advertising system. Evaluation results show that the generated keywords are more relevant to the given query compared with the baseline model and they have big potential to bring extra revenue improvement.
机译:生成的对抗网络(GAN)在生成图像,标签和句子等现实的合成数据方面取得了巨大成功。我们使用GaN探索直接从赞助的搜索广告选择中的查询生成BID关键字,尤其是罕见的查询。具体地,在搜索广告中的查询扩展(查询关键字匹配)方案中,我们将序列序列模型作为生成器来生成关键字,在用户查询上调节,并使用经常性的神经网络模型作为判别播放者与发电机的对抗游戏。通过应用训练有素的生成器,我们可以直接从给定查询生成关键字,以便我们可以高度提高基于查询关键字匹配的搜索广告中的广告选择的有效性和效率。我们从商业搜索广告系统中培训了在单击的Query-关键字对数据集中培训了所提出的模型。评估结果表明,与基线模型相比,生成的关键字与给定的查询更相关,并且它们有很大的潜力可以带来额外的收入改善。

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