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Knowledge-Based Risk Assessment Under Uncertainty for Species Invasion

机译:不确定性下基于知识的物种入侵风险评估

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摘要

Management of invasive species depends on developing prevention and control strategies through comprehensive risk assessment frameworks that need a thorough analysis of exposure to invasive species. However, accurate exposure analysis of invasive species can be a daunting task because of the inherent uncertainty in invasion processes. Risk assessment of invasive species under uncertainty requires potential integration of expert judgment with empirical information, which often can be incomplete, imprecise, and fragmentary. The representation of knowledge in classical risk models depends on the formulation of a precise probabilistic value or well-defined joint distribution of unknown parameters. However, expert knowledge and judgments are often represented in value-laden terms or preference-ordered criteria. We offer a novel approach to risk assessment by using a dominance-based rough set approach to account for preference order in the domains of attributes in the set of risk classes. The model is illustrated with an example showing how a knowledge-centric risk model can be integrated with the dominance-based principle of rough set to derive minimal covering "if ..., then...," decision rules to reason over a set of possible invasion scenarios. The inconsistency and ambiguity in the data set is modeled using the rough set concept of boundary region adjoining lower and upper approximation of risk classes. Finally, we present an extension of rough set to evidence a theoretic interpretation of risk measures of invasive species in a spatial context. In this approach, the multispecies interactions in an invasion risk are approximated with imprecise probability measures through a combination of spatial neighborhood information of risk estimation in terms of belief and plausibility.
机译:入侵物种的管理取决于通过全面的风险评估框架制定预防和控制策略,这些框架需要对入侵物种的暴露情况进行全面分析。但是,由于入侵过程固有的不确定性,对入侵物种进行准确的暴露分析可能是一项艰巨的任务。在不确定性下对入侵物种的风险评估需要专家判断与经验信息的潜在整合,而经验信息通常可能是不完整,不精确和零散的。经典风险模型中知识的表示取决于精确的概率值或未知参数的明确定义的联合分布。但是,专家知识和判断通常以高价值术语或偏好排序标准来表示。通过使用基于优势的粗糙集方法来说明风险类别集中属性域中的优先顺序,我们提供了一种新颖的风险评估方法。通过示例说明该模型,该示例显示了如何将知识中心风险模型与粗糙集的基于优势的原则集成在一起,以得出最小覆盖范围“如果...则...”的决策规则以对集合进行推理可能的入侵场景。数据集的不一致性和歧义性是使用边界区域的粗糙集概念与风险类别的上下近似相结合来建模的。最后,我们提出了粗糙集的扩展,以证明对空间环境下入侵物种风险度量的理论解释。在这种方法中,通过结合风险估计的空间邻域信息(根据信念和合理性),用不精确的概率度量来近似入侵风险中的多物种相互作用。

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