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Papers/NPRF: A Neural Pseudo Relevance Feedback Framework for Ad-...

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

Canjia Li, Yingfei Sun, Ben He, Le Wang, Kai Hui, Andrew Yates, Le Sun, Jungang Xu

2018-10-30EMNLP 2018 10Ad-Hoc Information RetrievalInformation RetrievalRetrieval
PaperPDFCode(official)

Abstract

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.

Results

TaskDatasetMetricValueModel
Ad-Hoc Information RetrievalTREC Robust04MAP0.2904NPRF-DRMM
Ad-Hoc Information RetrievalTREC Robust04P@200.4064NPRF-DRMM
Ad-Hoc Information RetrievalTREC Robust04nDCG@200.4502NPRF-DRMM
Ad-Hoc Information RetrievalTREC Robust04MAP0.2846NPRF-KNRM
Ad-Hoc Information RetrievalTREC Robust04P@200.3926NPRF-KNRM
Ad-Hoc Information RetrievalTREC Robust04nDCG@200.4327NPRF-KNRM
Ad-Hoc Information RetrievalTREC Robust04MAP0.2464KNRM
Ad-Hoc Information RetrievalTREC Robust04P@200.351KNRM
Ad-Hoc Information RetrievalTREC Robust04nDCG@200.3989KNRM

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