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NPRF: A Neural Pseudo Relevance Feedback Framework for Ad-hoc Information Retrieval

机译:NPRF:用于临时信息检索的神经伪相关反馈框架

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Pseudo relevance feedback (PRF) is commonly used to boost the performance of traditional information retrieval (IR) models by using top-ranked documents to identify and weight new query terms, thereby reducing the effect of query-document vocabulary mismatches. While neural retrieval models have recently demonstrated strong results for ad-hoc retrieval, combining them with PRF is not straightforward due to incompatibilities between existing PRF approaches and neural architectures. To bridge this gap. we propose an end-to-end neural PRF framework that can be used with existing neural IR models by embedding different neural models as building blocks. Extensive experiments on two standard test collections confirm the effectiveness of the proposed NPRF framework in improving the performance of two state-of-the-art neural IR models.
机译:伪相关反馈(PRF)通常用于通过使用排名最高的文档来标识和加权新的查询词,从而提高传统信息检索(IR)模型的性能,从而减少查询文档词汇不匹配的影响。尽管神经检索模型最近证明了即席检索的强大结果,但由于现有PRF方法和神经体系结构之间的不兼容性,将它们与PRF结合起来并不容易。弥合这一差距。我们提出了一种端到端神经PRF框架,该框架可以通过将不同的神经模型嵌入为构建基块来与现有的神经IR模型一起使用。在两个标准测试集合上进行的大量实验证实了建议的NPRF框架在改善两个最新的神经IR模型的性能方面的有效性。

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