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Task-Oriented Query Reformulation with Reinforcement Learning

机译:强化学习的面向任务的查询重构

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Search engines play an important role in our everyday lives by assisting us in finding the information we need. When we input a complex query, however, results are often far from satisfactory. In this work, we introduce a query reformulation system based on a neural network that rewrites a query to maximize the number of relevant documents returned. We train this neural network with reinforcement learning. The actions correspond to selecting terms to build a reformulated query, and the reward is the document recall. We evaluate our approach on three datasets against strong baselines and show a relative improvement of 5-20% in terms of recall. Furthermore, we present a simple method to estimate a conservative upper-bound performance of a model in a particular environment and verify that there is still large room for improvements.
机译:搜索引擎通过帮助我们找到所需信息来在我们的日常生活中发挥重要作用。但是,当我们输入一个复杂的查询时,结果往往远远不能令人满意。在这项工作中,我们介绍了一种基于神经网络的查询重新编制系统,该系统重写查询以最大程度地返回相关文档。我们通过强化学习来训练该神经网络。这些动作对应于选择术语以建立重新构造的查询,而奖励是文档召回。我们根据强基准对三个数据集评估了我们的方法,并在召回方面显示出5-20%的相对改善。此外,我们提出了一种简单的方法来估计特定环境中模型的保守上限性能,并验证仍有很大的改进空间。

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