Forecast combinations have flourished remarkably in the forecasting community and, in recent years, have become part of the mainstream of forecasting research and activities. Combining multiple forecasts produced from single (target) series is now widely used to improve accuracy through the integration of information gleaned from different sources, thereby mitigating the risk of identifying a single "best" forecast. Combination schemes have evolved from simple combination methods without estimation, to sophisticated methods involving time-varying weights, nonlinear combinations, correlations among components, and cross-learning. They include combining point forecasts and combining probabilistic forecasts. This paper provides an up-to-date review of the extensive literature on forecast combinations, together with reference to available open-source software implementations. We discuss the potential and limitations of various methods and highlight how these ideas have developed over time. Some important issues concerning the utility of forecast combinations are also surveyed. Finally, we conclude with current research gaps and potential insights for future research.
翻译:预测组合在预测界已显著发展,近年来已成为预测研究和活动主流的一部分。从单一(目标)系列产生的多重预测现已被广泛用来通过整合从不同来源收集的信息来提高准确性,从而减轻确定单一“最佳”预测的风险。组合计划已经从简单的组合方法演变为复杂的方法,包括时间分配权重、非线性组合、各组成部分之间的关联和交叉学习,其中包括合并点预测和概率预测。本文对预测组合的广泛文献进行了最新的审查,并提到了现有的公开源码软件的实施。我们讨论了各种方法的潜力和局限性,并着重指出这些想法如何随着时间推移而发展。还调查了关于预测组合的效用的一些重要问题。最后,我们总结了目前的研究差距和对未来研究的潜在见解。