MS MARCO: A Human Generated MAchine Reading COmprehension Dataset.

Tri Gia Nguyen(California Institute of Technology), Mir Rosenberg, Song Xia(Microsoft (United States)), Jianfeng Gao(Microsoft (United States)), Saurabh Tiwary(Microsoft (United States)), Rangan Majumder, Li Deng(Microsoft (United States))
Neural Information Processing Systems
November 4, 2016
Cited by 440

Abstract

This paper presents our recent work on the design and development of a new, large scale dataset, which we name MS MARCO, for MAchine Reading COmprehension. This new dataset is aimed to overcome a number of well-known weaknesses of previous publicly available datasets for the same task of reading comprehension and question answering. In MS MARCO, all questions are sampled from real anonymized user queries. The context passages, from which answers in the dataset are derived, are extracted from real web documents using the most advanced version of the Bing search engine. The answers to the queries are human generated. Finally, a subset of these queries has multiple answers. We aim to release one million queries and the corresponding answers in the dataset, which, to the best of our knowledge, is the most comprehensive real-world dataset of its kind in both quantity and quality. We are currently releasing 100,000 queries with their corresponding answers to inspire work in reading comprehension and question answering along with gathering feedback from the research community.


Related Papers

No related papers found

Powered by citation graph analysis