Danielle Epstein
2019
Natural Questions: A Benchmark for Question Answering Research
Tom Kwiatkowski
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Jennimaria Palomaki
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Olivia Redfield
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Michael Collins
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Ankur Parikh
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Chris Alberti
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Danielle Epstein
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Illia Polosukhin
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Jacob Devlin
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Kenton Lee
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Kristina Toutanova
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Llion Jones
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Matthew Kelcey
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Ming-Wei Chang
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Andrew M. Dai
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Jakob Uszkoreit
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Quoc Le
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Slav Petrov
Transactions of the Association for Computational Linguistics, Volume 7
We present the Natural Questions corpus, a question answering data set. Questions consist of real anonymized, aggregated queries issued to the Google search engine. An annotator is presented with a question along with a Wikipedia page from the top 5 search results, and annotates a long answer (typically a paragraph) and a short answer (one or more entities) if present on the page, or marks null if no long/short answer is present. The public release consists of 307,373 training examples with single annotations; 7,830 examples with 5-way annotations for development data; and a further 7,842 examples with 5-way annotated sequestered as test data. We present experiments validating quality of the data. We also describe analysis of 25-way annotations on 302 examples, giving insights into human variability on the annotation task. We introduce robust metrics for the purposes of evaluating question answering systems; demonstrate high human upper bounds on these metrics; and establish baseline results using competitive methods drawn from related literature.