McAndrew Thomas, Wattanachit Nutcha, Gibson Graham C, Reich Nicholas G
Department of Biostatistics and Epidemiology, School of Public Health and Health Sciences, University of Massachusetts at Amherst, Amherst, Massachusetts, USA.
Wiley Interdiscip Rev Comput Stat. 2021 Mar-Apr;13(2). doi: 10.1002/wics.1514. Epub 2020 Jun 16.
Forecasts support decision making in a variety of applications. Statistical models can produce accurate forecasts given abundant training data, but when data is sparse or rapidly changing, statistical models may not be able to make accurate predictions. Expert judgmental forecasts-models that combine expert-generated predictions into a single forecast-can make predictions when training data is limited by relying on human intuition. Researchers have proposed a wide array of algorithms to combine expert predictions into a single forecast, but there is no consensus on an optimal aggregation model. This review surveyed recent literature on aggregating expert-elicited predictions. We gathered common terminology, aggregation methods, and forecasting performance metrics, and offer guidance to strengthen future work that is growing at an accelerated pace.
预测在各种应用中支持决策制定。给定大量训练数据时,统计模型可以做出准确的预测,但当数据稀疏或快速变化时,统计模型可能无法做出准确的预测。专家判断预测模型(将专家生成的预测合并为单一预测的模型)在训练数据有限时可以依靠人类直觉进行预测。研究人员已经提出了大量算法来将专家预测合并为单一预测,但对于最优聚合模型尚无共识。本综述调查了近期关于汇总专家得出的预测的文献。我们收集了通用术语、聚合方法和预测性能指标,并为加强目前正在加速发展的未来工作提供指导。