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Dynamic Bayesian networks with Gaussian mixture models for short-term passenger flow forecasting

机译:动态高斯混合模型的贝叶斯网络用于短期客流预测

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A dynamic Bayesian network approach is proposed for short-term passenger flow forecasting. The graphical structure is based on the causal relationships between the flows and their spatiotemporal neighbourhood, and takes into account the transport service. In previous work, we described the local conditional distributions as linear Gaussians. In this paper, we extend the approach to Gaussian mixture models in order to better catch the nonlinear relationships between the variables. In the presence of incomplete data, the structure and the parameters are learned by the structural expectation-maximization (EM) algorithm, to which we add a new step for determining the optimal number of mixing components. The model is applied to the on-board passenger flows of Paris metro line 2 and outperforms the other testing methods.
机译:提出了一种动态贝叶斯网络方法来进行短期客流预测。图形结构基于流及其时空邻域之间的因果关系,并考虑了运输服务。在先前的工作中,我们将局部条件分布描述为线性高斯分布。在本文中,我们将方法扩展到高斯混合模型,以便更好地捕获变量之间的非线性关系。在存在不完整数据的情况下,通过结构期望最大化(EM)算法学习结构和参数,在该算法中,我们增加了确定最佳混合组分数的新步骤。该模型适用于巴黎地铁2号线的车载客流,性能优于其他测试方法。

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