Abstract
ABSTRACTFailing to communicate current knowledge limitations, that is, epistemic uncertainty, in environmental risk assessment (ERA) may have severe consequences for decision making. Bayesian networks (BNs) have gained popularity in ERA, primarily because they can combine variables from different models and integrate data and expert judgment. This paper highlights potential gaps in the treatment of uncertainty when using BNs for ERA and proposes a consistent framework (and a set of methods) for treating epistemic uncertainty to help close these gaps. The proposed framework describes the treatment of epistemic uncertainty about the model structure, parameters, expert judgment, data, management scenarios, and the assessment's output. We identify issues related to the differentiation between aleatory and epistemic uncertainty and the importance of communicating both uncertainties associated with the assessment predictions (direct uncertainty) and the strength of knowledge supporting the assessment (indirect uncertainty). Probabilities, intervals, or scenarios are expressions of direct epistemic uncertainty. The type of BN determines the treatment of parameter uncertainty: epistemic, aleatory, or predictive. Epistemic BNs are useful for probabilistic reasoning about states of the world in light of evidence. Aleatory BNs are the most relevant for ERA, but they are not sufficient to treat epistemic uncertainty alone because they do not explicitly express parameter uncertainty. For uncertainty analysis, we recommend embedding an aleatory BN into a model for parameter uncertainty. Bayesian networks do not contain information about uncertainty in the model structure, which requires several models. Statistical models (e.g., hierarchical modeling outside the BNs) are required to consider uncertainties and variability associated with data. We highlight the importance of being open about things one does not know and carefully choosing a method to precisely communicate both direct and indirect uncertainty in ERA. Integr Environ Assess Manag 2021;17:221–232. © 2020 The Authors. Integrated Environmental Assessment and Management published by Wiley Periodicals LLC on behalf of Society of Environmental Toxicology & Chemistry (SETAC)
Highlights
Environmental risk assessment (ERA) is a systematic process of evaluating the impact of natural or anthropogenic threats to organisms
Treating Epistemic Uncertainty in Bayesian Networks—Integr Environ Assess Manag 17, 2021 between 1) the object, source, and level of uncertainty; 2) how uncertainty is expressed; 3) the different types of Bayesian networks (BNs); and 4) where uncertainties are found in an application of a BN
Even if both frequentist and Bayesian inference can be used to infer a BN's parameters, it is advisable to opt for Bayesian inference whenever the aim is to quantify uncertainty in the parameters by subjective probability and expert judgment is used in the assessment
Summary
Environmental risk assessment (ERA) is a systematic process of evaluating the impact of natural or anthropogenic threats to organisms. Treating Epistemic Uncertainty in Bayesian Networks—Integr Environ Assess Manag 17, 2021 between 1) the object, source, and level of uncertainty; 2) how uncertainty is expressed; 3) the different types of BNs; and 4) where uncertainties are found in an application of a BN. We apply this framework and identify treatments of uncertainty done within or outside a BN used for risk assessment
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