Where the bee sucks: a dynamic Bayesian network approach to decision support for pollinator abundance strategies

Martine J Barons, Aditi Shenvi
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Abstract

Abstract For policymakers wishing to make evidence-based decisions, one of the challenges is how to combine the relevant information and evidence in a coherent and defensible manner in order to formulate and evaluate candidate policies. Policymakers often need to rely on experts with disparate fields of expertise when making policy choices in complex, multi-faceted, dynamic environments such as those dealing with ecosystem services. The pressures affecting the survival and pollination capabilities of honey bees (Apis mellifera), wild bees, and other pollinators is well documented, but incomplete. In order to estimate the potential effectiveness of various candidate policies to support pollination services, there is an urgent need to quantify the effect of various combinations of variables on the pollination ecosystem service, utilising available information, models and expert judgement. In this paper, we present a new application of the integrating decision support system methodology, using dynamic Bayesian networks, for combining inputs from multiple panels of experts to evaluate policies to support an abundant pollinator population.
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蜜蜂在哪里吮吸:传粉媒介丰度策略决策支持的动态贝叶斯网络方法
对于希望做出基于证据的决策的决策者来说,挑战之一是如何将相关信息和证据以连贯和可辩护的方式结合起来,以制定和评估候选政策。政策制定者在复杂、多方面、动态的环境(如处理生态系统服务的环境)中做出政策选择时,往往需要依赖具有不同专业领域的专家。影响蜜蜂(Apis mellifera)、野生蜜蜂和其他传粉媒介的生存和授粉能力的压力有很好的记录,但不完整。为了评估支持授粉服务的各种候选政策的潜在有效性,迫切需要利用现有信息、模型和专家判断,量化各种变量组合对授粉生态系统服务的影响。在本文中,我们提出了一种新的综合决策支持系统方法的应用,使用动态贝叶斯网络,将来自多个专家小组的输入结合起来,以评估支持丰富传粉媒介种群的政策。
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