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Papers/Deep Relevance Ranking Using Enhanced Document-Query Inter...

Deep Relevance Ranking Using Enhanced Document-Query Interactions

Ryan McDonald, Georgios-Ioannis Brokos, Ion Androutsopoulos

2018-09-05EMNLP 2018 10Question AnsweringAd-Hoc Information Retrieval
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Abstract

We explore several new models for document relevance ranking, building upon the Deep Relevance Matching Model (DRMM) of Guo et al. (2016). Unlike DRMM, which uses context-insensitive encodings of terms and query-document term interactions, we inject rich context-sensitive encodings throughout our models, inspired by PACRR's (Hui et al., 2017) convolutional n-gram matching features, but extended in several ways including multiple views of query and document inputs. We test our models on datasets from the BIOASQ question answering challenge (Tsatsaronis et al., 2015) and TREC ROBUST 2004 (Voorhees, 2005), showing they outperform BM25-based baselines, DRMM, and PACRR.

Results

TaskDatasetMetricValueModel
Ad-Hoc Information RetrievalTREC Robust04MAP0.271POSIT-DRMM-MV
Ad-Hoc Information RetrievalTREC Robust04P@200.389POSIT-DRMM-MV
Ad-Hoc Information RetrievalTREC Robust04nDCG@200.464POSIT-DRMM-MV
Ad-Hoc Information RetrievalTREC Robust04MAP0.258PACRR
Ad-Hoc Information RetrievalTREC Robust04P@200.374PACRR
Ad-Hoc Information RetrievalTREC Robust04nDCG@200.445PACRR

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