Review of statistical methods and data requirements to support post market environmental monitoring of agro ecosystems
2014; European Food Safety Authority; Volume: 11; Issue: 11 Linguagem: Inglês
10.2903/sp.efsa.2014.en-582
ISSN2397-8325
AutoresPeter A. Henrys, Jill Thompson, Greet Smets, Patrick Rudelshiem, Rosemary S. Hails, Stephen N. Freeman, Boet Glandorf, R.I. Smith,
Tópico(s)Sustainable Agricultural Systems Analysis
ResumoEFSA Supporting PublicationsVolume 11, Issue 11 3883AX1 External scientific reportOpen Access Review of statistical methods and data requirements to support post market environmental monitoring of agro ecosystems Peter A. Henrys, Peter A. Henrys Centre for Ecology and HydrologySearch for more papers by this authorJill Thompson, Jill Thompson Centre for Ecology and HydrologySearch for more papers by this authorGreet Smets, Greet Smets PerseusSearch for more papers by this authorPatrick Rudelshiem, Patrick Rudelshiem PerseusSearch for more papers by this authorRosie Hails, Rosie Hails Centre for Ecology and HydrologySearch for more papers by this authorStephen Freeman, Stephen Freeman Centre for Ecology and HydrologySearch for more papers by this authorDebora C.M. Glandorf, Debora C.M. Glandorf Rijksinstituut voor Volksgezondheid en MilieuSearch for more papers by this authorRon Smith, Ron Smith Centre for Ecology and HydrologySearch for more papers by this author Peter A. Henrys, Peter A. Henrys Centre for Ecology and HydrologySearch for more papers by this authorJill Thompson, Jill Thompson Centre for Ecology and HydrologySearch for more papers by this authorGreet Smets, Greet Smets PerseusSearch for more papers by this authorPatrick Rudelshiem, Patrick Rudelshiem PerseusSearch for more papers by this authorRosie Hails, Rosie Hails Centre for Ecology and HydrologySearch for more papers by this authorStephen Freeman, Stephen Freeman Centre for Ecology and HydrologySearch for more papers by this authorDebora C.M. Glandorf, Debora C.M. Glandorf Rijksinstituut voor Volksgezondheid en MilieuSearch for more papers by this authorRon Smith, Ron Smith Centre for Ecology and HydrologySearch for more papers by this author First published: 14 November 2014 https://doi.org/10.2903/sp.efsa.2014.EN-582Citations: 6 The present document has been produced and adopted by the bodies identified above as author(s). This task has been carried out exclusively by the author(s) in the context of a contract between the European Food Safety Authority and the author(s), awarded following a tender procedure. The present document is published complying with the transparency principle to which the Authority is subject. It may not be considered as an output adopted by the Authority. The European food Safety Authority reserves its rights, view and position as regards the issues addressed and the conclusions reached in the present document, without prejudice to the rights of the authors. Published date: 14 November 2014 Question number: EFSA-Q-2012-00597 AboutPDF ToolsExport citationAdd to favoritesTrack citation ShareShare Give accessShare full text accessShare full-text accessPlease review our Terms and Conditions of Use and check box below to share full-text version of article.I have read and accept the Wiley Online Library Terms and Conditions of UseShareable LinkUse the link below to share a full-text version of this article with your friends and colleagues. Learn more.Copy URL Share a linkShare onEmailFacebookTwitterLinkedInRedditWechat References Abrahantes, J. C., Molenberghs, G., Burzykowski, T., Shkedy, Z., Abad, A. A., & Renard, D. (2004). Choice of units of analysis and modeling strategies in multilevel hierarchical models. Computational statistics & data analysis, 47(3), 537–563. 10.1016/j.csda.2003.12.003 Web of Science®Google Scholar Benjamini, Y. (2010). Discovering the false discovery rate. 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