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Probabilistic Forecasting Using Monte Carlo Dropout Neural Networks

机译:使用蒙特卡洛辍学神经网络的概率预测

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Using artificial neural networks for forecasting tasks is a popular approach that has proven to be very accurate. When used to estimate prediction intervals, a normal distribution is usually assumed as the data noise uncertainty term, as in MVE networks, while model parameters uncertainty is often ignored. Because of this, prediction intervals estimated by them are narrow in uncertain regions where train data is scarce. To tackle this problem we apply Monte Carlo dropout, which is a model uncertainty representation technique, to the network parameters of a Long Short-Term Memory MVE network, allowing us to construct better prediction intervals in probabilistic forecasting tasks. We compare our proposal with the pure MVE method in four wind speed and one consumer load real forecasting datasets, showing that our method improves results in terms of the Winkler loss in both one step ahead and multi-step ahead probabilistic forecasting.
机译:使用人工神经网络预测任务是一种流行的方法,已被证明是非常准确的。当用于估计预测间隔时,通常将正态分布假定为数据噪声不确定性项,如在MVE网络中那样,而模型参数不确定性通常被忽略。因此,在缺少火车数据的不确定区域中,它们估计的预测间隔很窄。为解决此问题,我们将蒙特卡洛辍学(一种模型不确定性表示技术)应用于长短期记忆MVE网络的网络参数,从而使我们能够在概率预测任务中构建更好的预测间隔。我们将我们的建议与纯MVE方法在四个风速和一个消费者负荷的真实预测数据集中进行了比较,表明我们的方法在提前概率预测和多步概率预测方面都改善了Winkler损失方面的结果。

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