Regularized methods have been widely applied to system identification problems without known model structures. This paper proposes an infinite-dimensional sparse learning algorithm based on atomic norm regularization. Atomic norm regularization decomposes the transfer function into first-order atomic models and solves a group lasso problem that selects a sparse set of poles and identifies the corresponding coefficients. The difficulty in solving the problem lies in the fact that there are an infinite number of possible atomic models. This work proposes a greedy algorithm that generates new candidate atomic models maximizing the violation of the optimality condition of the existing problem. This algorithm is able to solve the infinite-dimens...
We consider the least-square regression problem with regularization by a block 1-norm, i.e., a sum o...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
Regularized methods have been widely applied to system identification problems without known model s...
In the traditional system identification techniques, a priori model structure is widely assumed to b...
Low-rank approximation a b s t r a c t Advances of modern science and engineering lead to unpreceden...
Abstract—We introduce a recursive adaptive group lasso al-gorithm for real-time penalized least squa...
The paper considers supervised learning problems of labeled data with grouped input features. The gr...
Regularization technique has become a principled tool for statistics and machine learning research a...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
We present a data dependent generalization bound for a large class of regularized algorithms which i...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
l2,1-norm is an effective regularization to enforce a simple group sparsity for feature learning. To...
This paper proposes a new algorithm for linear system identification from noisy measure-ments. The p...
Nowadays, the explosive data scale increase provides an unprecedented opportunity to apply machine l...
We consider the least-square regression problem with regularization by a block 1-norm, i.e., a sum o...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
Regularized methods have been widely applied to system identification problems without known model s...
In the traditional system identification techniques, a priori model structure is widely assumed to b...
Low-rank approximation a b s t r a c t Advances of modern science and engineering lead to unpreceden...
Abstract—We introduce a recursive adaptive group lasso al-gorithm for real-time penalized least squa...
The paper considers supervised learning problems of labeled data with grouped input features. The gr...
Regularization technique has become a principled tool for statistics and machine learning research a...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
We present a data dependent generalization bound for a large class of regularized algorithms which i...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
l2,1-norm is an effective regularization to enforce a simple group sparsity for feature learning. To...
This paper proposes a new algorithm for linear system identification from noisy measure-ments. The p...
Nowadays, the explosive data scale increase provides an unprecedented opportunity to apply machine l...
We consider the least-square regression problem with regularization by a block 1-norm, i.e., a sum o...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...