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RLTM: An Efficient Neural IR Framework for Long Documents

机译:RLTM:长文件的高效神经红外框架

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摘要

Deep neural networks have achieved significant improvements in information retrieval (IR). However, most existing models are computational costly and can not efficiently scale to long documents. This paper proposes a novel End-to-End neural ranking framework called Reinforced Long Text Matching (RLTM) which matches a query with long documents efficiently and effectively. The core idea behind the framework can be analogous to the human judgment process which firstly locates the relevance parts quickly from the whole document and then matches these parts with the query carefully to obtain the final label. Firstly, we select relevant sentences from the long documents by a coarse and efficient matching model. Secondly, we generate a relevance score by a more sophisticated matching model based on the sentence selected. The whole model is trained jointly with reinforcement learning in a pairwise manner by maximizing the expected score gaps between positive and negative examples. Experimental results demonstrate that RLTM has greatly improved the efficiency and effectiveness of the state-of-the-art models.
机译:深度神经网络在信息检索(IR)中取得了显着的改进。但是,大多数现有模型是计算成本昂贵的,无法有效地扩展到长文件。本文提出了一种名为加强长文本匹配(RLTM)的新型端到端神经排名框架,其与高效有效地匹配具有长文档的查询。框架背后的核心思想可以类似于首先从整个文档快速定位相关性部件的人为判断过程,然后仔细定位这些部件,以获取最终标签。首先,我们通过粗略和有效的匹配模型从长篇文档中选择相关句子。其次,我们通过基于所选句子的句子更复杂的匹配模型生成相关性得分。通过最大化正面和负例之间的预期分数间隙,整个模型以成对的方式共同培训。实验结果表明,RLTM极大地提高了最先进的模型的效率和有效性。

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