Online Prediction Under Model Uncertainty via Dynamic Model Averaging: Application to a Cold Rolling Mill

被引:277
作者
Raftery, Adrian E. [1 ]
Karny, Miroslav [2 ]
Ettler, Pavel [3 ]
机构
[1] Univ Washington, Dept Stat, Seattle, WA 98195 USA
[2] Acad Sci Czech Republic, Inst Informat Theory & Automat, Dept Adapt Syst, UTIA, CR-18208 Prague, Czech Republic
[3] COMPUREG Plzen SRO, Plzen 30634, Czech Republic
基金
美国国家科学基金会;
关键词
Kalman filter; Recursive model averaging; State space model; HIDDEN MARKOV-MODELS; STATE ESTIMATION; TARGET TRACKING; TUTORIAL; SYSTEMS;
D O I
10.1198/TECH.2009.08104
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
We consider the problem of online prediction when it is uncertain what the best prediction model to use is. We develop a method called Dynamic Model Averaging (DMA) in which a state space model for the parameters of each model is combined with a Markov chain model for the correct model. This allows the "correct" model to vary over time. The state space and Markov chain models are both specified in terms of forgetting, leading to a highly parsimonious representation. As a special case, when the model and parameters do not change. DMA is a recursive implementation of standard Bayesian model averaging, which we call recursive model averaging (RMA). The method is applied to the problem of predicting the output strip thickness for a cold rolling mill, where the output is measured with a time delay. We found that when only a small number of physically motivated models were considered and one was clearly best, the method quickly converged to the best model, and the cost of model uncertainty was small; indeed DMA performed slightly better than the best physical model. When model uncertainty and the number of models considered were large, our method ensured that the penalty for model uncertainty was small. At the beginning of the process, when control is most difficult, we found that DMA over a large model space led to better predictions than the single best performing physically motivated model. We also applied the method to several simulated examples, and found that it recovered both constant and time-varying regression parameters and model specifications quite well.
引用
收藏
页码:52 / 66
页数:15
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