This paper gives two methods for the L₁ analysis of sampled-data systems, by which we mean computing the L∞-induced norm of sampled-data systems. This is achieved by developing what we call the kernel approximation approach in the setting of sampled-data systems. We first consider the lifting treatment of sampled-data systems and give an operator theoretic representation of their input/output relation. We further apply the fast-lifting technique by which the sampling interval [0, h) is divided into M subintervals with an equal width, and provide methods for computing the L∞-induced norm. In contrast to a similar approach developed earlier called the input approximation approach, we use an idea of kernel approximation, in which the kernel fu...
We follow a learning theory viewpoint to study a family of learning schemes for regression related t...
This paper considers linear time-invariant (LTI) sampled-data systems and studies their generalized ...
We propose randomized techniques for speeding up Kernel Principal Component Analysis on three levels...
This paper gives two methods for the L-1 analysis of sampled-data systems, by which we mean computin...
This paper provides a method for the L 1 analysis of sampled-data systems, by which we mean the comp...
This paper deals with the L-1 analysis of linear sampled-data systems, by which we mean the computat...
This paper is concerned with a new framework called the kernel approximation approach to the L1 opti...
This paper develops a generalized framework for computing the -induced norm of sampled-data systems,...
This paper provides a discretization method for computing the induced norm from L₂ to L∞ in single-i...
This article provides a new framework for the so-called L1 optimal control problem of sampled-data s...
This paper develops a new discretization method with piecewise linear approximation for the L₁ optim...
This study deals with the L₁ analysis of stable finite-dimensional linear time-invariant (LTI) syste...
This paper develops a new discretization method with piecewise linear approximation for the L-1 opti...
This study deals with the L-1 analysis of stable finite-dimensional linear time-invariant (LTI) syst...
This paper considers linear time-invariant (LTI) sampled-data systems and studies their generalized ...
We follow a learning theory viewpoint to study a family of learning schemes for regression related t...
This paper considers linear time-invariant (LTI) sampled-data systems and studies their generalized ...
We propose randomized techniques for speeding up Kernel Principal Component Analysis on three levels...
This paper gives two methods for the L-1 analysis of sampled-data systems, by which we mean computin...
This paper provides a method for the L 1 analysis of sampled-data systems, by which we mean the comp...
This paper deals with the L-1 analysis of linear sampled-data systems, by which we mean the computat...
This paper is concerned with a new framework called the kernel approximation approach to the L1 opti...
This paper develops a generalized framework for computing the -induced norm of sampled-data systems,...
This paper provides a discretization method for computing the induced norm from L₂ to L∞ in single-i...
This article provides a new framework for the so-called L1 optimal control problem of sampled-data s...
This paper develops a new discretization method with piecewise linear approximation for the L₁ optim...
This study deals with the L₁ analysis of stable finite-dimensional linear time-invariant (LTI) syste...
This paper develops a new discretization method with piecewise linear approximation for the L-1 opti...
This study deals with the L-1 analysis of stable finite-dimensional linear time-invariant (LTI) syst...
This paper considers linear time-invariant (LTI) sampled-data systems and studies their generalized ...
We follow a learning theory viewpoint to study a family of learning schemes for regression related t...
This paper considers linear time-invariant (LTI) sampled-data systems and studies their generalized ...
We propose randomized techniques for speeding up Kernel Principal Component Analysis on three levels...