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. 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 quic...
AbstractMany problems in complex dynamical systems involve metastable regimes despite nearly Gaussia...
The development of accurate forecasting systems for real-world time series modeling is a challenging...
This paper describes our work in learning on-line models that forecast real-valued variables in a hi...
Here we give a technique for online prediction that uses different model selection principles (MSP's...
Summary: We propose an online binary classification procedure for cases when there is uncertainty ab...
We consider prediction based on a main model. When the main model shares partial parameters with sev...
Abstract of associated article: Bayesian model averaging has become a widely used approach to accoun...
Bayesian model averaging has become a widely used approach to accounting for un-certainty about the ...
Raftery, Kárný, and Ettler (2010) introduce an estimation technique, which they refer to as dynamic ...
Abstract. Making use of predictions is a crucial, but under-explored, area of online algorithms. Thi...
We address the problem of predicting a time series using the ARMA (autoregressive moving average) mo...
This paper discusses the problem of selecting model parameters in time series forecasting using aggr...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
Making use of predictions is a crucial, but under-explored, area of online algorithms. This paper st...
Making use of predictions is a crucial, but under-explored, area of sequential decision problems wit...
AbstractMany problems in complex dynamical systems involve metastable regimes despite nearly Gaussia...
The development of accurate forecasting systems for real-world time series modeling is a challenging...
This paper describes our work in learning on-line models that forecast real-valued variables in a hi...
Here we give a technique for online prediction that uses different model selection principles (MSP's...
Summary: We propose an online binary classification procedure for cases when there is uncertainty ab...
We consider prediction based on a main model. When the main model shares partial parameters with sev...
Abstract of associated article: Bayesian model averaging has become a widely used approach to accoun...
Bayesian model averaging has become a widely used approach to accounting for un-certainty about the ...
Raftery, Kárný, and Ettler (2010) introduce an estimation technique, which they refer to as dynamic ...
Abstract. Making use of predictions is a crucial, but under-explored, area of online algorithms. Thi...
We address the problem of predicting a time series using the ARMA (autoregressive moving average) mo...
This paper discusses the problem of selecting model parameters in time series forecasting using aggr...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
Making use of predictions is a crucial, but under-explored, area of online algorithms. This paper st...
Making use of predictions is a crucial, but under-explored, area of sequential decision problems wit...
AbstractMany problems in complex dynamical systems involve metastable regimes despite nearly Gaussia...
The development of accurate forecasting systems for real-world time series modeling is a challenging...
This paper describes our work in learning on-line models that forecast real-valued variables in a hi...