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Iterative Hierarchical Attention for Answering Complex Questions over Long Documents

2021-06-01Unverified0· sign in to hype

Haitian Sun, William W. Cohen, Ruslan Salakhutdinov

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Abstract

We propose a new model, DocHopper, that iteratively attends to different parts of long, hierarchically structured documents to answer complex questions. Similar to multi-hop question-answering (QA) systems, at each step, DocHopper uses a query q to attend to information from a document, combines this ``retrieved'' information with q to produce the next query. However, in contrast to most previous multi-hop QA systems, DocHopper is able to ``retrieve'' either short passages or long sections of the document, thus emulating a multi-step process of ``navigating'' through a long document to answer a question. To enable this novel behavior, DocHopper does not combine document information with q by concatenating text to the text of q, but by combining a compact neural representation of q with a compact neural representation of a hierarchical part of the document, which can potentially be quite large. We experiment with DocHopper on four different QA tasks that require reading long and complex documents to answer multi-hop questions, and show that DocHopper achieves state-of-the-art results on three of the datasets. Additionally, DocHopper is efficient at inference time, being 3--10 times faster than the baselines.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
HybridQADocHopperANS-EM46.3Unverified

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