Center for Risk Analysis, Harvard University, 718 Huntington Ave., Boston, MA 02115, USA.
Risk Anal. 2013 Jan;33(1):109-20. doi: 10.1111/j.1539-6924.2012.01833.x. Epub 2012 May 14.
Expert judgment (or expert elicitation) is a formal process for eliciting judgments from subject-matter experts about the value of a decision-relevant quantity. Judgments in the form of subjective probability distributions are obtained from several experts, raising the question how best to combine information from multiple experts. A number of algorithmic approaches have been proposed, of which the most commonly employed is the equal-weight combination (the average of the experts' distributions). We evaluate the properties of five combination methods (equal-weight, best-expert, performance, frequentist, and copula) using simulated expert-judgment data for which we know the process generating the experts' distributions. We examine cases in which two well-calibrated experts are of equal or unequal quality and their judgments are independent, positively or negatively dependent. In this setting, the copula, frequentist, and best-expert approaches perform better and the equal-weight combination method performs worse than the alternative approaches.
专家判断(或专家启发)是一种从主题专家那里获取有关决策相关数量价值的判断的正式过程。以主观概率分布的形式从几位专家那里获得判断,这就提出了如何最好地组合来自多个专家的信息的问题。已经提出了许多算法方法,其中最常用的是等权重组合(专家分布的平均值)。我们使用模拟专家判断数据来评估五种组合方法(等权重、最佳专家、性能、频率和 Copula)的属性,对于这些数据,我们知道生成专家分布的过程。我们研究了两种校准良好的专家质量相等或不等以及他们的判断独立、正相关或负相关的情况。在这种情况下,Copula、频率和最佳专家方法的表现更好,而等权重组合方法的表现比其他方法差。