Empirical modelling often aims for the simplest model consistent with the data. A new technique is presented which quantifies the consistency of the model dynamics as a function of location in state space. As is well-known, traditional statistics of nonlinear models like root-mean-square (RMS) forecast error can prove misleading. Testing consistency is shown to overcome some of the deficiencies of RMS error, both within the perfect model scenario and when applied to data from several physical systems using previously published models. In particular, testing for consistent nonlinear dynamics provides insight towards (i) identifying when a delay reconstruction fails to be an embedding, (ii) allowing state-dependent model selection and (iii) o...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
Transferring information from observations to models of complex systems may meet impediments when th...
Empirical modelling often aims for the simplest model consistent with the data. A new technique is p...
Empirical modelling often aims for the simplest model consistent with the data. A new technique is p...
Empirical modelling often aims for the simplest model consistent with the data. A new technique is p...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
Natural systems are often complex and dynamic (i.e. nonlinear), making them difficult to understand ...
Abstract: Current model identification strategies often have the objective of finding the model or m...
Physical processes such as the weather are usually modelled using nonlinear dynamical systems. Stati...
In nonlinear econometric models, the evaluation of forecast errors is usually performed, completely ...
Physical processes are often modelled using nonlinear dynamical systems. If such models are relevan...
The creation of computer models is often driven by the need to make predictions in regions where the...
Abstract—Non-linear models are challenging when it is time to verify that a certain HPC optimization...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
Transferring information from observations to models of complex systems may meet impediments when th...
Empirical modelling often aims for the simplest model consistent with the data. A new technique is p...
Empirical modelling often aims for the simplest model consistent with the data. A new technique is p...
Empirical modelling often aims for the simplest model consistent with the data. A new technique is p...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
Natural systems are often complex and dynamic (i.e. nonlinear), making them difficult to understand ...
Abstract: Current model identification strategies often have the objective of finding the model or m...
Physical processes such as the weather are usually modelled using nonlinear dynamical systems. Stati...
In nonlinear econometric models, the evaluation of forecast errors is usually performed, completely ...
Physical processes are often modelled using nonlinear dynamical systems. If such models are relevan...
The creation of computer models is often driven by the need to make predictions in regions where the...
Abstract—Non-linear models are challenging when it is time to verify that a certain HPC optimization...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
Transferring information from observations to models of complex systems may meet impediments when th...