Time Series Forecasting Models Copy the Past: How to Mitigate

Chrysoula Kosma, Giannis Nikolentzos, Nancy R. Xu, M. Vazirgiannis
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引用次数: 2

Abstract

Time series forecasting is at the core of important application domains posing significant challenges to machine learning algorithms. Recently neural network architectures have been widely applied to the problem of time series forecasting. Most of these models are trained by minimizing a loss function that measures predictions' deviation from the real values. Typical loss functions include mean squared error (MSE) and mean absolute error (MAE). In the presence of noise and uncertainty, neural network models tend to replicate the last observed value of the time series, thus limiting their applicability to real-world data. In this paper, we provide a formal definition of the above problem and we also give some examples of forecasts where the problem is observed. We also propose a regularization term penalizing the replication of previously seen values. We evaluate the proposed regularization term both on synthetic and real-world datasets. Our results indicate that the regularization term mitigates to some extent the aforementioned problem and gives rise to more robust models.
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时间序列预测模型复制过去:如何缓解
时间序列预测是对机器学习算法提出重大挑战的重要应用领域的核心。近年来,神经网络结构被广泛应用于时间序列预测问题。这些模型中的大多数都是通过最小化损失函数来训练的,损失函数测量预测值与实际值的偏差。典型的损失函数包括均方误差(MSE)和平均绝对误差(MAE)。在存在噪声和不确定性的情况下,神经网络模型倾向于复制时间序列的最后观测值,从而限制了它们对现实世界数据的适用性。在本文中,我们给出了上述问题的一个正式定义,并给出了一些观测到该问题的预测实例。我们还提出了一个正则化项来惩罚先前看到的值的复制。我们在合成数据集和真实数据集上评估了提出的正则化项。我们的结果表明,正则化项在一定程度上缓解了上述问题,并产生了更鲁棒的模型。
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