Deep Learning Relevance: Creating Relevant Information (as Opposed to Retrieving it).

arXiv: Information Retrieval(2016)

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摘要
What if Information Retrieval (IR) systems did not just retrieve relevant information that is stored in their indices, but could also understand it and synthesise it into a single document? We present a preliminary study that makes a first step towards answering this question. Given a query, we train a Recurrent Neural Network (RNN) on existing relevant information to that query. We then use the RNN to learn a single, synthetic, and we assume, relevant document for that query. We design a crowdsourcing experiment to assess how relevant the document is, compared to existing relevant documents. Users are shown a query and four wordclouds (of three existing relevant documents and our deep learned synthetic document). The synthetic document is ranked on average most relevant of all.
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