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Characterising bias in regulatory risk and decision analysis: An analysis of heuristics applied in health technology appraisal, chemicals regulation, and climate change governance

机译:表征监管风险和决策分析中的偏见:对在健康技术评估,化学品监管和气候变化治理中应用的启发式分析

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In many environmental and public health domains, heuristic methods of risk and decision analysis must be relied upon, either because problem structures are ambiguous, reliable data is lacking, or decisions are urgent. This introduces an additional source of uncertainty beyond model and measurement error - uncertainty stemming from relying on inexact inference rules. Here we identify and analyse heuristics used to prioritise risk objects, to discriminate between signal and noise, to weight evidence, to construct models, to extrapolate beyond datasets, and to make policy. Some of these heuristics are based on causal generalisations, yet can misfire when these relationships are presumed rather than tested (e.g. surrogates in clinical trials). Others are conventions designed to confer stability to decision analysis, yet which may introduce serious error when applied ritualistically (e.g. significance testing). Some heuristics can be traced back to formal justifications, but only subject to strong assumptions that are often violated in practical applications. Heuristic decision rules (e.g. feasibility rules) in principle act as surrogates for utility maximisation or distributional concerns, yet in practice may neglect costs and benefits, be based on arbitrary thresholds, and be prone to gaming. We highlight the problem of rule-entrenchment, where analytical choices that are in principle contestable are arbitrarily fixed in practice, masking uncertainty and potentially introducing bias. Strategies for making risk and decision analysis more rigorous include: formalising the assumptions and scope conditions under which heuristics should be applied; testing rather than presuming their underlying empirical or theoretical justifications; using sensitivity analysis, simulations, multiple bias analysis, and deductive systems of inference (e.g. directed acyclic graphs) to characterise rule uncertainty and refine heuristics; adopting "recovery schemes" to correct for known biases; and basing decision rules on clearly articulated values and evidence, rather than convention.
机译:在许多环境和公共卫生领域中,必须依靠启发式的风险和决策分析方法,因为问题结构模棱两可,缺少可靠的数据或决策很紧急。这引入了模型和测量误差之外的不确定性的另一个来源-不确定性源于对不精确推理规则的依赖。在这里,我们确定并分析用于优先考虑风险对象,区分信号和噪声,权衡证据,构建模型,推断数据集之外以及制定政策的启发式方法。这些启发式方法中有一些是基于因果概括的,但是当这些关系被假定而不是经过检验(例如,临床试验中的替代)时,可能会误导。其他约定则旨在为决策分析赋予稳定性,但在进行仪式性使用时(例如重要性测试)可能会引入严重错误。某些启发式方法可以追溯到形式上的理由,但只能服从在实际应用中经常被违反的强大假设。启发式决策规则(例如,可行性规则)原则上是效用最大化或分配问题的替代,但实际上可能会忽略成本和收益,基于任意阈值,并且容易产生博弈。我们着重强调规则制定的问题,在实践中,原则上可竞争的分析选择在实践中是任意固定的,掩盖了不确定性并可能引入偏见。使风险和决策分析更加严格的策略包括:规范应用启发法的假设和范围条件;测试而不是假设其潜在的经验或理论依据;使用敏感性分析,模拟,多重偏差分析和演绎推理系统(例如有向无环图)来表征规则不确定性并完善启发法;采用“恢复方案”纠正已知偏差;并将决策规则建立在明确表达的价值观和证据之上,而不是基于惯例。

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