Using machine learning to advance synthesis and use of conservation and environmental evidence

Article impact statement: Machine learning optimizes processes of systematic evidence synthesis and improves its utility for evidence‐based conservation.

Saved in:
Bibliographic Details
Published in:Conservation biology Vol. 32; no. 4; pp. 762 - 764
Main Authors: Cheng, S.H., Augustin, C., Bethel, A., Gill, D., Anzaroot, S., Brun, J., DeWilde, B., Minnich, R.C., Garside, R., Masuda, Y.J., Miller, D.C., Wilkie, D., Wongbusarakum, S., McKinnon, M.C.
Format: Journal Article
Language:English
Published: United States Wiley Blackwell, Inc 01-08-2018
Blackwell Publishing Ltd
Subjects:
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:Article impact statement: Machine learning optimizes processes of systematic evidence synthesis and improves its utility for evidence‐based conservation.
Bibliography:Machine learning optimizes processes of systematic evidence synthesis and improves its utility for evidence‐based conservation.
Article impact statement
SourceType-Other Sources-1
ObjectType-Article-2
content type line 63
ObjectType-Correspondence-1
ISSN:0888-8892
1523-1739
DOI:10.1111/cobi.13117