On the Study of Transformers for Query Suggestion

Agnès Mustar, S. Lamprier, Benjamin Piwowarski
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引用次数: 13

Abstract

When conducting a search task, users may find it difficult to articulate their need, even more so when the task is complex. To help them complete their search, search engine usually provide query suggestions. A good query suggestion system requires to model user behavior during the search session. In this article, we study multiple Transformer architectures applied to the query suggestion task and compare them with recurrent neural network (RNN)-based models. We experiment Transformer models with different tokenizers, with different Encoders (large pretrained models or fully trained ones), and with two kinds of architectures (flat or hierarchic). We study the performance and the behaviors of these various models, and observe that Transformer-based models outperform RNN-based ones. We show that while the hierarchical architectures exhibit very good performances for query suggestion, the flat models are more suitable for complex and long search tasks. Finally, we investigate the flat models behavior and demonstrate that they indeed learn to recover the hierarchy of a search session.
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关于变压器查询建议的研究
在执行搜索任务时,用户可能会发现很难表达他们的需求,当任务很复杂时更是如此。为了帮助他们完成搜索,搜索引擎通常会提供查询建议。一个好的查询建议系统需要在搜索过程中对用户行为进行建模。在本文中,我们研究了应用于查询建议任务的多种Transformer架构,并将它们与基于循环神经网络(RNN)的模型进行了比较。我们用不同的标记器、不同的编码器(大型预训练模型或完全训练的模型)和两种体系结构(扁平或分层)来实验Transformer模型。我们研究了这些不同模型的性能和行为,并观察到基于transformer的模型优于基于rnn的模型。研究表明,层次结构在查询建议方面表现出很好的性能,而平面模型更适合于复杂和长时间的搜索任务。最后,我们研究了平面模型的行为,并证明它们确实学会了恢复搜索会话的层次结构。
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