In this paper, we develop a novel constrained recursive least squares algorithm for adaptively combining a set of given multiple models. With data available in an online fashion, the linear combination coefficients of submodels are adapted via the proposed algorithm.We propose to minimize the mean square error with a forgetting factor, and apply the sum to one constraint to the combination parameters. Moreover an l1-norm constraint to the combination parameters is also applied with the aim to achieve sparsity of multiple models so that only a subset of models may be selected into the final model. Then a weighted l2-norm is applied as an approximation to the l1-norm term. As such at each time step, a closed solution of the model combination ...
In this paper, we derive an adaptive one-class classification algorithm. We propose a least-squares ...
Abstract—We consider adaptive system identification problems with convex constraints and propose a f...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
This paper proposes a novel adaptive multiple modelling algorithm for non-linear and non-stationary ...
The $l_1$-norm sparsity constraint is a widely used technique for constructing sparse models. In thi...
This paper proposes a novel adaptive multiple modelling algorithm for non-linear and non-stationary ...
A unified and generalized framework for a recur-sive least squares (RLS)-like least mean square (LMS...
The ability to perform online model identification for nonlinear systems with unknown dynamics is es...
This paper is concerned with the implementation and testing of an algorithm for solving constrained ...
Adaptive filters have found applications in many signal processing problems. In some situations, lin...
The solution of nonlinear least-squares problems is investigated. The asymptotic behavior is studied...
In this paper, a new computationally efficient algorithm for recursive least-squares (RLS) filtering...
In this paper, a new method is proposed for adaptive optimal model following control of a finite dim...
The recursive least-squares (RLS) algorithm is one of the most well-known algorithms used in adaptiv...
In this contribution, a covariance counterpart is described of the information matrix approach to co...
In this paper, we derive an adaptive one-class classification algorithm. We propose a least-squares ...
Abstract—We consider adaptive system identification problems with convex constraints and propose a f...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
This paper proposes a novel adaptive multiple modelling algorithm for non-linear and non-stationary ...
The $l_1$-norm sparsity constraint is a widely used technique for constructing sparse models. In thi...
This paper proposes a novel adaptive multiple modelling algorithm for non-linear and non-stationary ...
A unified and generalized framework for a recur-sive least squares (RLS)-like least mean square (LMS...
The ability to perform online model identification for nonlinear systems with unknown dynamics is es...
This paper is concerned with the implementation and testing of an algorithm for solving constrained ...
Adaptive filters have found applications in many signal processing problems. In some situations, lin...
The solution of nonlinear least-squares problems is investigated. The asymptotic behavior is studied...
In this paper, a new computationally efficient algorithm for recursive least-squares (RLS) filtering...
In this paper, a new method is proposed for adaptive optimal model following control of a finite dim...
The recursive least-squares (RLS) algorithm is one of the most well-known algorithms used in adaptiv...
In this contribution, a covariance counterpart is described of the information matrix approach to co...
In this paper, we derive an adaptive one-class classification algorithm. We propose a least-squares ...
Abstract—We consider adaptive system identification problems with convex constraints and propose a f...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...