Decision-makers abhor uncertainty, and it is certainly true that the less there is of it the better. However, recognizing that uncertainty is part of the equation, particularly for deciding on environmental policy, is a prerequisite for making wise decisions. Even making no decision is a decision that has consequences, and using the presence of uncertainty as the reason for failing to act is a poor excuse. Statistical science is the science of uncertainty, and it should play a critical role in the decision-making process. This opinion piece focuses on the summit of the knowledge pyramid that starts from data and rises in steps from data to information, from information to knowledge, and finally from knowledge to decisions. Enormous advances have been made in the last 100 years ascending the pyramid, with deviations that have followed different routes. There has generally been a healthy supply of uncertainty quantification along the way but, in a rush to the top, where the decisions are made, uncertainty is often left behind. In my opinion, statistical science needs to be much more pro-active in evolving classical decision theory into a relevant and practical area of decision applications. This article follows several threads, building on the decision-theoretic foundations of loss functions and Bayesian uncertainty.
翻译:决策者憎恶不确定因素,而且决策者肯定认为这种不确定性越少越好。然而,认识到不确定性是等式的一部分,特别是决定环境政策,是作出明智决定的先决条件。即使不作任何决定也是具有后果的决定,而且将不确定性的存在作为不采取行动的理由也是不恰当的借口。统计科学是不确定性的科学,它在决策过程中应该发挥关键的作用。这一意见文章的重点是知识金字塔的顶峰,从数据开始,从数据到知识,最后从知识到决策,从数据到信息,从知识到信息,从知识到决策,从等步骤到等。在过去100年里,金字塔上已经取得了巨大的进步,偏离了不同的路径。一般都有一个健康的不确定性量化供应,但在匆忙地到达高层时,不确定性往往被抛在了后面。我认为,统计科学需要更加积极主动地将传统的决策理论演变成一个相关和实际的决策应用领域。这一条沿着几条线走,以损失和巴伊的不确定性的决策基础为基础。