Robust forecast superiority testing with an application to assessing pools of expert forecasters
提出一种对损失函数选择稳健的预测优越性检验方法,基于随机占优原理,克服了现有检验在均匀有效性和非保守性方面的不足,并通过蒙特卡洛实验和SPF数据验证了其良好性能。
Summary We develop forecast superiority tests that are robust to the choice of loss function by following Jin, Corradi and Swanson (JCS: 2017), and relying on a mapping between generic loss forecast evaluation and stochastic dominance principles. However, unlike JCS tests, which are not uniformly valid and are correctly sized only under the least favorable case, our tests are uniformly asymptotically valid and non‐conservative. To show this, we establish uniform convergence of HAC variance estimators. Monte Carlo experiments indicate good finite sample performance of our tests, and an empirical illustration suggests that prior forecast accuracy matters in the Survey of Professional Forecasters.