The report considers the case when multidimensional memoryless objects have an unknown stochastic dependence between output variables, a training sample is available. Such processes are called T-processes. Constructing a model for such a process leads to solve a system of implicit functions. Moreover, the form of these functions is unknown up to parameters. Therefore, practical application of generally accepted parametric identification theory is not possible. In this case, we will use a piecemeal approach to predict output variables from known input variable
When one wants to estimate a model without specifying the functions and distributions parametrically...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
The report considers the case when multidimensional memoryless objects have an unknown stochastic de...
In this paper we consider the problem of modeling noninertial processes with stochastic dependence b...
The problem of data processing and modeling for discrete and continuous processes widely used in va...
Текст статьи не публикуется в открытом доступе в соответствии с политикой журнала
The article deals with the problem of modeling stochastic processes under uncertainty. The peculiari...
The task of nonparametric identification of dynamic objects with discrete-continuous nature of the p...
This paper derives sufficient conditions for nonparametric trans-formation models to be identified a...
We consider estimation for a class of Lévy processes, modelled as a sum of a drift, a symmetric stab...
Multivariable and closed-loop identification of large scale industrial processes is studied. The pro...
We consider the identification of a Markov process {W_t, X^(*)_t} when only {W_t} is observed. In s...
We propose a model selection approach for covariance estimation of a multi-dimensional stochastic pr...
In supervised classification, one attempts to learn a model of how objects map to labels by selectin...
When one wants to estimate a model without specifying the functions and distributions parametrically...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
The report considers the case when multidimensional memoryless objects have an unknown stochastic de...
In this paper we consider the problem of modeling noninertial processes with stochastic dependence b...
The problem of data processing and modeling for discrete and continuous processes widely used in va...
Текст статьи не публикуется в открытом доступе в соответствии с политикой журнала
The article deals with the problem of modeling stochastic processes under uncertainty. The peculiari...
The task of nonparametric identification of dynamic objects with discrete-continuous nature of the p...
This paper derives sufficient conditions for nonparametric trans-formation models to be identified a...
We consider estimation for a class of Lévy processes, modelled as a sum of a drift, a symmetric stab...
Multivariable and closed-loop identification of large scale industrial processes is studied. The pro...
We consider the identification of a Markov process {W_t, X^(*)_t} when only {W_t} is observed. In s...
We propose a model selection approach for covariance estimation of a multi-dimensional stochastic pr...
In supervised classification, one attempts to learn a model of how objects map to labels by selectin...
When one wants to estimate a model without specifying the functions and distributions parametrically...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...