论文标题
与关联知识的查询变化广告文本生成
Query-Variant Advertisement Text Generation with Association Knowledge
论文作者
论文摘要
在线广告是许多IT公司的重要收入来源。在搜索广告方案中,满足搜索查询需求的广告文本对用户更具吸引力。但是,为大量物品的查询变化广告文本的手动创建很昂贵。传统的文本生成方法倾向于以高频的高频关注一般的搜索需求,同时忽略低频的多样化个性化搜索需求。在本文中,我们提出了查询变异的广告文本生成任务,该任务旨在根据查询和项目关键字为不同的Web搜索查询生成候选广告文本。为了解决忽略低频需求的问题,我们提出了一种动态关联机制,以基于外部知识扩展接收场,该机制可以获取相关的单词以添加到输入中。这些相关的词可以用作桥梁,将模型从熟悉的高频单词转移到陌生的低频词。通过关联,该模型可以在查询中利用各种个性化需求,并生成查询变化的广告文本。自动评估和人类评估都表明,与基准相比,我们的模型可以产生更具吸引力的广告文本。
Online advertising is an important revenue source for many IT companies. In the search advertising scenario, advertisement text that meets the need of the search query would be more attractive to the user. However, the manual creation of query-variant advertisement texts for massive items is expensive. Traditional text generation methods tend to focus on the general searching needs with high frequency while ignoring the diverse personalized searching needs with low frequency. In this paper, we propose the query-variant advertisement text generation task that aims to generate candidate advertisement texts for different web search queries with various needs based on queries and item keywords. To solve the problem of ignoring low-frequency needs, we propose a dynamic association mechanism to expand the receptive field based on external knowledge, which can obtain associated words to be added to the input. These associated words can serve as bridges to transfer the ability of the model from the familiar high-frequency words to the unfamiliar low-frequency words. With association, the model can make use of various personalized needs in queries and generate query-variant advertisement texts. Both automatic and human evaluations show that our model can generate more attractive advertisement text than baselines.