A Bayesian approach to predicting traffic flows at signalised intersections is considered using the the INLA framework. INLA is a deterministic, computationally efficient alternative to MCMC for estimating a posterior distribution. It is designed for latent Gaussian models where the parameters follow a joint Gaussian distribution. An assumption which naturally evolves from an LGM is that of a Gaussian Markov Random Field (GMRF). It can be shown that a traffic prediction model based in both space and time satisfies this assumption, and as such the INLA algorithm provides accurate prediction when space, time, and other relevant covariants are included in the model.
翻译:利用INLA框架,考虑采用贝叶斯法预测信号十字路口的交通流量。INLA是MCMC的决定性、计算效率高的替代物,用于估计后方分布。它针对潜伏高斯模型,其参数与Gaussian联合分布。从LGM自然演变出来的假设是高斯安·马尔科夫随机场(GMRF)的假设。可以证明,基于时空的交通预测模型符合这一假设,因此INLA算法提供了空间、时间和其他相关共变因素纳入模型时的准确预测。