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A Neural Passage Model for Ad-hoc Document Retrieval

机译:Ad-hoc文件检索的神经通道模型

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Traditional statistical retrieval models often treat each document as a whole. In many cases, however, a document is relevant to a query only because a small part of it contain the targeted information. In this work, we propose a neural passage model (NPM) that uses passage-level information to improve the performance of ad-hoc retrieval. Instead of using a single window to extract passages, our model automatically learns to weight passages with different granularities in the training process. We show that the passage-based document ranking paradigm from previous studies can be directly derived from our neural framework. Also, our experiments on a TREC collection showed that the NPM can significantly outperform the existing passage-based retrieval models.
机译:传统的统计检索模型通常会将每个文件整体治疗。然而,在许多情况下,文档只与查询相关,因为它的一小部分包含目标信息。在这项工作中,我们提出了一种神经通道模型(NPM),它使用通道级信息来提高Ad-hoc检索的性能。而不是使用单个窗口来提取段落,我们的模型自动学会在培训过程中具有不同粒度的体重段。我们表明,基于段落的文档排名范例来自以前的研究可以直接来自我们的神经框架。此外,我们对TREC系列的实验表明,NPM可以显着优于现有的基于段落的检索模型。

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