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Accumulating evidence using crowdsourcing and machine learning: A living bibliography about existential risk and global catastrophic risk

Authors :
John B. Hume
Dag Sørebø
William J. Sutherland
Michael Levot
Bryony C. Cade
Julius Weitzdörfer
David Denkenberger
Lydia Collas
Haydn Belfield
Elliot M. Jones
Theodore Stone
Shahar Avin
Catherine Rhodes
David M. Pyle
Thomas Johnson
Harry Watkins
Seán S. ÓhÉigeartaigh
Simon Beard
Luke Kemp
Lalitha S Sundaram
Gorm E. Shackelford
Zachary Freitas-Groff
David Price
Daniel Hurt
Source :
Futures. 116:102508
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

The study of existential risk — the risk of human extinction or the collapse of human civilization — has only recently emerged as an integrated field of research, and yet an overwhelming volume of relevant research has already been published. To provide an evidence base for policy and risk analysis, this research should be systematically reviewed. In a systematic review, one of many time-consuming tasks is to read the titles and abstracts of research publications, to see if they meet the inclusion criteria. We show how this task can be shared between multiple people (using crowdsourcing) and partially automated (using machine learning), as methods of handling an overwhelming volume of research. We used these methods to create The Existential Risk Research Assessment (TERRA), which is a living bibliography of relevant publications that gets updated each month ( www.x-risk.net ). We present the results from the first ten months of TERRA, in which 10,001 abstracts were screened by 51 participants. Several challenges need to be met before these methods can be used in systematic reviews. However, we suggest that collaborative and cumulative methods such as these will need to be used in systematic reviews as the volume of research increases.

Details

ISSN :
00163287
Volume :
116
Database :
OpenAIRE
Journal :
Futures
Accession number :
edsair.doi...........59522a7710bd99dc3d009bf66e89078b
Full Text :
https://doi.org/10.1016/j.futures.2019.102508