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      Task-Oriented Query Reformulation with Reinforcement Learning

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          Abstract

          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.

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          Relevance based language models

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            A study of smoothing methods for language models applied to Ad Hoc information retrieval

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              Query expansion using local and global document analysis

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                Author and article information

                Journal
                2017-04-14
                Article
                1704.04572
                924d4d60-6ce8-417e-9608-51384b8002c1

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                cs.IR

                Information & Library science
                Information & Library science

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