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Applying Deep Learning to Answer Selection: A Study and An Open Task

About

We apply a general deep learning framework to address the non-factoid question answering task. Our approach does not rely on any linguistic tools and can be applied to different languages or domains. Various architectures are presented and compared. We create and release a QA corpus and setup a new QA task in the insurance domain. Experimental results demonstrate superior performance compared to the baseline methods and various technologies give further improvements. For this highly challenging task, the top-1 accuracy can reach up to 65.3% on a test set, which indicates a great potential for practical use.

Minwei Feng, Bing Xiang, Michael R. Glass, Lidan Wang, Bowen Zhou• 2015

Related benchmarks

TaskDatasetResultRank
Answer SelectionWikiQA (test)
MAP0.6701
149
QA Answer SelectionTREC Answer Selection (test)
MAP0.7147
33
Fake News Stance DetectionFNC 1 (test)
Agree74.09
30
Answer SelectionInsuranceQA (dev)
Accuracy65.4
6
Answer SelectionInsuranceQA (test1)
Accuracy65.3
6
Answer SelectionInsuranceQA (test2)
Accuracy61
6
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