In various applications, probabilistic forecasts are required to quantify the inherent uncertainty associated with the forecast. However, numerous modern forecasting methods are still designed to create deterministic forecasts. Transforming these deterministic forecasts into probabilistic forecasts is often challenging and based on numerous assumptions that may not hold in real-world situations. Therefore, the present article proposes a novel approach for creating probabilistic forecasts from arbitrary deterministic forecasts. In order to implement this approach, we use a conditional Invertible Neural Network (cINN). More specifically, we apply a cINN to learn the underlying distribution of the data and then combine the uncertainty from this distribution with an arbitrary deterministic forecast to generate accurate probabilistic forecasts. Our approach enables the simple creation of probabilistic forecasts without complicated statistical loss functions or further assumptions. Besides showing the mathematical validity of our approach, we empirically show that our approach noticeably outperforms traditional methods for including uncertainty in deterministic forecasts and generally outperforms state-of-the-art probabilistic forecasting benchmarks.
翻译:在各种应用中,需要概率预测来量化与预测有关的内在不确定性,然而,许多现代预测方法仍然设计成确定性预测。将这些确定性预测转换成概率预测往往具有挑战性,并且基于在现实世界中可能无法维持的许多假设。因此,本条款提出了一种新颖的方法,从任意确定性预测中得出概率预测。为了实施这一方法,我们使用一个有条件的不可逆神经网络。更具体地说,我们应用一个CINN来了解数据的基本分布,然后将这种分布的不确定性与任意确定性预测结合起来,以得出准确的概率预测。我们的方法使得在不复杂的统计损失功能或进一步假设的情况下简单地创建概率预测。我们除了表明我们的方法的数学有效性外,我们的经验表明,我们的方法明显地超越了传统方法,将不确定性纳入确定性预测中,并普遍地超过最先进的预测基准。