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DOI10.1021/acs.est.6b03220
Bayesian Networks Improve Causal Environmental Assessments for Evidence-Based Policy
Carriger, John F.1; Barron, Mace G.2; Newman, Michael C.3
发表日期2016-12-20
ISSN0013-936X
卷号50期号:24页码:13195-13205
英文摘要

Rule-based weight of evidence approaches to ecological risk assessment may not account for uncertainties and generally lack probabilistic integration of lines of evidence. Bayesian networks allow causal inferences to be made from evidence by including causal knowledge about the problem, using this knowledge with probabilistic calculus to combine multiple lines of evidence, and minimizing biases in predicting or diagnosing causal relationships. Too often, sources of uncertainty in conventional weight of evidence approaches are ignored that can be accounted for with Bayesian networks. Specifying and propagating uncertainties improve the ability of models to incorporate strength of the evidence in the risk management phase of an assessment. Probabilistic inference from a Bayesian network allows evaluation of changes in uncertainty for variables from the evidence. The network structure and probabilistic framework of a Bayesian approach provide advantages over qualitative approaches in weight of evidence for capturing the impacts of multiple sources of quantifiable uncertainty on predictions of ecological risk. Bayesian networks can facilitate the development of evidence-based policy under conditions of uncertainty by incorporating analytical inaccuracies or the implications of imperfect information, structuring and communicating causal issues through qualitative directed graph formulations, and quantitatively comparing the causal power of multiple stressors on valued ecological resources. These aspects are demonstrated through hypothetical problem scenarios that explore some major benefits of using Bayesian networks for reasoning and making inferences in evidence-based policy.


语种英语
WOS记录号WOS:000390620900004
来源期刊ENVIRONMENTAL SCIENCE & TECHNOLOGY
来源机构美国环保署
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/59662
作者单位1.US EPA, Oak Ridge Inst Sci & Educ, Off Res & Dev, Natl Hlth & Environm Effects Res Lab,Gulf Ecol Di, 1 Sabine Isl Dr, Gulf Breeze, FL 32561 USA;
2.US EPA, Off Res & Dev, Natl Hlth & Environm Effects Res Lab, Gulf Ecol Div, 1 Sabine Isl Dr, Gulf Breeze, FL 32561 USA;
3.Virginia Inst Marine Sci, Coll William & Mary, POB 1346,Route 1208 Greate Rd, Gloucester Point, VA 23062 USA
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Carriger, John F.,Barron, Mace G.,Newman, Michael C.. Bayesian Networks Improve Causal Environmental Assessments for Evidence-Based Policy[J]. 美国环保署,2016,50(24):13195-13205.
APA Carriger, John F.,Barron, Mace G.,&Newman, Michael C..(2016).Bayesian Networks Improve Causal Environmental Assessments for Evidence-Based Policy.ENVIRONMENTAL SCIENCE & TECHNOLOGY,50(24),13195-13205.
MLA Carriger, John F.,et al."Bayesian Networks Improve Causal Environmental Assessments for Evidence-Based Policy".ENVIRONMENTAL SCIENCE & TECHNOLOGY 50.24(2016):13195-13205.
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