Dual Learning for Query Generation and Query Selection in Query Feeds Recommendation

Kunxun Qi, Ruoxu Wang, Qikai Lu, Xuejiao Wang, Ning Jing, Di Niu, Haolan Chen
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引用次数: 2

Abstract

Query feeds recommendation is a new recommended paradigm in mobile search applications, where a stream of queries need to be recommended to improve user engagement. It requires a great quantity of attractive queries for recommendation. A conventional solution is to retrieve queries from a collection of past queries recorded in user search logs. However, these queries usually have poor readability and limited coverage of article content, and are thus not suitable for the query feeds recommendation scenario. Furthermore, to deploy the generated queries for recommendation, human validation, which is costly in practice, is required to filter unsuitable queries. In this paper, we propose TitIE, a query mining system to generate valuable queries using the titles of documents. We employ both an extractive text generator and an abstractive text generator to generate queries from titles. To improve the acceptance rate during human validation, we further propose a model-based scoring strategy to pre-select the queries that are more likely to be accepted during human validation. Finally, we propose a novel dual learning approach to jointly learn the generation model and the selection model by making full use of the unlabeled corpora under a semi-supervised scheme, thereby simultaneously improving the performance of both models. Results from both offline and online evaluations demonstrate the superiority of our approach.
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查询提要推荐中查询生成和查询选择的双重学习
查询提要推荐是移动搜索应用中的一种新的推荐范例,需要推荐一系列查询来提高用户粘性。它需要大量有吸引力的查询来进行推荐。传统的解决方案是从用户搜索日志中记录的过去查询的集合中检索查询。然而,这些查询通常可读性较差,并且文章内容的覆盖范围有限,因此不适合查询提要推荐场景。此外,为了部署生成的查询进行推荐,需要人工验证来过滤不合适的查询,这在实践中是非常昂贵的。在本文中,我们提出了一个查询挖掘系统TitIE,它可以利用文档的标题生成有价值的查询。我们使用抽取文本生成器和抽象文本生成器从标题生成查询。为了提高人工验证过程中的接受率,我们进一步提出了一种基于模型的评分策略,以预先选择在人工验证过程中更有可能被接受的查询。最后,我们提出了一种新的双重学习方法,在半监督方案下充分利用未标记的语料库,共同学习生成模型和选择模型,从而同时提高了两个模型的性能。离线和在线评估的结果都证明了我们方法的优越性。
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