Many traffic prediction applications rely on uncertainty estimates instead of the mean prediction. Statistical traffic prediction literature has a complete subfield devoted to uncertainty modelling, but recent deep learning traffic prediction models either lack this feature or make specific assumptions that restrict its practicality. We propose Quantile Graph Wavenet, a Spatio-Temporal neural network that is trained to estimate a density given the measurements of previous timesteps, conditioned on a quantile. Our method of density estimation is fully parameterised by our neural network and does not use a likelihood approximation internally. The quantile loss function is asymmetric and this makes it possible to model skewed densities. This approach produces uncertainty estimates without the need to sample during inference, such as in Monte Carlo Dropout, which makes our method also efficient.
翻译:许多交通流量预测应用依赖于不确定性估计,而不是平均预测。统计流量预测文献有一个完整的子领域,专门用于不确定性建模,但最近的深学习流量预测模型要么缺乏这一特征,要么作出限制其实用性的具体假设。我们提议使用量子图波网,这是一个Spatio-Temporal神经网络,经过培训,可以根据先前时间步骤的测量来估计密度,但以量为条件。我们的密度估计方法由神经网络充分参数化,不使用内部的可能性近似值。量化损失功能是不对称的,因此可以模拟倾斜密度。这种方法产生不确定性估计,无需在推断期间进行抽样,例如在蒙特卡洛漏流,这也使我们的方法也变得有效。