In modern data analysis often the first step is to perform some data preprocessing, e.g. detrending or elimination of periodic components of known period length. This is normally done using least squares regression. Only afterwards black box models are estimated using either pseudo-maximum-likelihood methods, prediction error methods or subspace algorithms. In this paper it is shown, that for subspace methods this is essentially the same as including the corresponding input variables, e.g. a constant or a trend or a periodic component, as additional input variables. Here essentially means, that the estimates only dier through the choice of initial values
So called subspace methods for direct identification of linear models in state space form have drawn...
© 2019 Elsevier B.V. Dimension reduction is often an important step in the analysis of high-dimensio...
ISBN: 978-1-84821-277-0This chapter contains sections titled: Model, concept of subspace, definition...
In modern data analysis often the first step is to perform some data preprocessing, e.g. detrending ...
With increasingly many variables available to macroeconomic forecasters, dimension reduction methods...
So called subspace methods for direct identification of linear state space models form a very useful...
In the framework of the subspace-based identification of linear systems, the first step for the cons...
Forecasting linear dynamical systems using subspace methods A new procedure to predict with subspace...
The main topic of this thesis is linear subspaces for regression { how to nd the subspaces and how t...
We give a general overview of the state-of-the-art in subspace system identification methods. We hav...
In this paper, we investigate the relation between a recently proposed subspace method based on pred...
In this paper, we present a novel subspace identification algorithm in which all non-causal terms ar...
AbstractBy use of cyclic subspaces, explicit connections between principal component regression (PCR...
The prediction-error approach to parameter estimation of linear models often involves solving a non-...
In this paper we shall discuss the link between these \u201cpredictor-based\u201d methods; to this p...
So called subspace methods for direct identification of linear models in state space form have drawn...
© 2019 Elsevier B.V. Dimension reduction is often an important step in the analysis of high-dimensio...
ISBN: 978-1-84821-277-0This chapter contains sections titled: Model, concept of subspace, definition...
In modern data analysis often the first step is to perform some data preprocessing, e.g. detrending ...
With increasingly many variables available to macroeconomic forecasters, dimension reduction methods...
So called subspace methods for direct identification of linear state space models form a very useful...
In the framework of the subspace-based identification of linear systems, the first step for the cons...
Forecasting linear dynamical systems using subspace methods A new procedure to predict with subspace...
The main topic of this thesis is linear subspaces for regression { how to nd the subspaces and how t...
We give a general overview of the state-of-the-art in subspace system identification methods. We hav...
In this paper, we investigate the relation between a recently proposed subspace method based on pred...
In this paper, we present a novel subspace identification algorithm in which all non-causal terms ar...
AbstractBy use of cyclic subspaces, explicit connections between principal component regression (PCR...
The prediction-error approach to parameter estimation of linear models often involves solving a non-...
In this paper we shall discuss the link between these \u201cpredictor-based\u201d methods; to this p...
So called subspace methods for direct identification of linear models in state space form have drawn...
© 2019 Elsevier B.V. Dimension reduction is often an important step in the analysis of high-dimensio...
ISBN: 978-1-84821-277-0This chapter contains sections titled: Model, concept of subspace, definition...