基于上下文感知表示学习的个性化搜索历史编码

Yujia Zhou, Zhicheng Dou, Ji-rong Wen
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引用次数: 25

摘要

个性化搜索的关键是根据用户的搜索历史来明确当前查询的含义。以前的个性化研究试图在历史数据的基础上建立用户档案,以定制排名。然而,我们认为基于用户配置文件的方法并不能真正消除当前查询的歧义。在建立用户档案时,他们仍然保留了一些语义上的偏见。在本文中,我们提出用上下文感知表示学习对历史进行编码,以增强当前查询的表示,这是一种明确用户信息需求的直接方法。具体而言,我们利用转换器在聚合上下文信息方面的优势,设计了查询消歧模型,对当前查询进行多阶段的语义解析。此外,为了涵盖当前查询不足以表达意图的情况,我们训练了一个个性化的语言模型来从现有查询中预测用户意图。在两个子模型的交互作用下,我们可以生成当前查询的上下文感知表示,并在此基础上对结果进行重新排序。实验结果表明,与以往的方法相比,我们的模型有了显著的改进。
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Encoding History with Context-aware Representation Learning for Personalized Search
The key to personalized search is to clarify the meaning of current query based on user's search history. Previous personalized studies tried to build user profiles on the basis of historical data to tailor the ranking. However, we argue that the user profile based methods do not really disambiguate the current query. They still retain some semantic bias when building user profiles. In this paper, we propose to encode history with context-aware representation learning to enhance the representation of current query, which is a direct way to clarify the user's information need. Specifically, endowed with the benefit from transformer on aggregating contextual information, we devise a query disambiguation model to parse the meaning of current query in multiple stages. Moreover, for covering the cases that current query is not sufficient to express the intent, we train a personalized language model to predict user intent from existing queries. Under the interaction of two sub-models, we can generate the context-aware representation of current query and re-rank the results based on it. Experimental results show the significant improvement of our model compared with previous methods.
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