This expository paper discusses Bayesian decision analysis perspectives on problems of constrained forecasting. Foundational and pedagogic discussion contrasts decision analytic approaches with the traditional, but typically inappropriate, inferential approach. Illustrative examples include development of novel constrained point forecasting and entropic tilting methodology to explore consistency of a predictive distribution with an imposed or hypothesized constraint. Linear, aggregate constraints define illuminating examples that relate to broadly important problems involving aggregate and hierarchical constraints in commercial and economic forecasting. Discussion explores the impact of different loss functions, questions of how constrained forecasting is impacted by dependencies among outcomes being predicted, and promotes the broader use of decision analysis including routine evaluation of predictive distributions of loss under chosen forecasts/decisions. Extensions to more general constrained forecasting problems, connections with broader interests in forecast reconciliation and other considerations are noted.
翻译:基础讨论和教学讨论将决策分析方法与传统的、但通常不适当的推论方法形成对比,举例来说,举例来说,包括制定新的限制点预测和引温倾斜方法,以探讨预测分布与强加的或假设的制约的一致性; 线性、综合限制,定义了与商业和经济预测中涉及总和和等级限制的广泛重要问题有关的启发性实例; 讨论探讨了不同损失功能的影响、限制预测如何受到预测结果依赖的影响问题,并促进更广泛地使用决定分析,包括对所选择预测/决定的损失预测分布进行例行评价; 指出扩大一般限制预测问题的范围,与预测协调方面的更广泛利益和其他考虑的联系。