ICT systems provide detailed information on computer network traffic. However, due to storage limitations, some of the information on past traffic is often only retained in an aggregated form. In this paper we show that Linear Gaussian State Space Models yield simple yet effective methods to make predictions based on time series at different aggregation levels. The models link coarse-grained and fine-grained time series to a single model that is able to provide fine-grained predictions. Our numerical experiments show up to 3.7 times improvement in expected mean absolute forecast error when forecasts are made using, instead of ignoring, additional coarse-grained observations. The forecasts are obtained in a Bayesian formulation of the model, which allows for provisioning of a traffic prediction service with highly informative priors obtained from coarse-grained historical data.
翻译:然而,由于储存限制,有些关于过去交通的信息往往仅以汇总形式保留。在本文件中,我们表明,Linear Gaussian州空间模型能够产生简单而有效的方法,在不同总层次的时间序列的基础上作出预测。模型将粗重和细重的时间序列与能够提供精细预测的单一模型联系起来。我们的数字实验显示,在使用而不是忽略额外粗重观察进行预测时,预期的绝对预测误差增加了3.7倍。这些预测是在Bayesian制定模型时取得的,该模型可以提供从粗重历史数据中获得的高度信息预报服务。