We present a sublinear query algorithm for outputting a near-optimal low-rank approximation to any positive semidefinite Toeplitz matrix $T \in \mathbb{R}^{d \times d}$. In particular, for any integer rank $k \leq d$ and $\epsilon,\delta > 0$, our algorithm makes $\tilde{O} \left (k^2 \cdot \log(1/\delta) \cdot \text{poly}(1/\epsilon) \right )$ queries to the entries of $T$ and outputs a rank $\tilde{O} \left (k \cdot \log(1/\delta)/\epsilon\right )$ matrix $\tilde{T} \in \mathbb{R}^{d \times d}$ such that $\| T - \tilde{T}\|_F \leq (1+\epsilon) \cdot \|T-T_k\|_F + \delta \|T\|_F$. Here, $\|\cdot\|_F$ is the Frobenius norm and $T_k$ is the optimal rank-$k$ approximation to $T$, given by projection onto its top $k$ eigenvectors. $\tilde{O}(\...
We consider the Low Rank Approximation problem, where the input consists of a matrix $A \in \mathbb{...
International audienceLinear systems with structures such as Toeplitz-, Vandermonde-or Cauchy-likene...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
AbstractThis paper concerns the construction of a structured low rank matrix that is nearest to a gi...
AbstractWe consider displacements which are linear operations mapping a near-Toeplitz matrix into a ...
Algorithms are presented for least-squares approximation of Toeplitz and Hankel matrices from noise ...
Applications of semidefinite optimization in signal processing are often derived from the Kalman–Yaku...
This work is concerned with computing low-rank approximations of a matrix function $f(A)$ for a larg...
AbstractComments are made regarding the implementation of a Toeplitz-matrix inversion algorithm desc...
This paper proposes a set of piecewise Toeplitz matrices as the linear mapping/sensing operator A: R...
Abstract. We propose a superfast solver for Toeplitz linear systems based on rank structured matrix ...
AbstractAn algorithm is presented which reduces the problem of solving a Toeplitz system (1) TX=Y to...
A matrix algorithm runs at sublinear cost if the number of arithmetic operations involved is far few...
Structured linear algebra techniques are a versatile set of tools; they enable one to deal at once w...
In this thesis, we present the O(n(log n)^2) superfast linear least squares Schur algorithm (ssschur...
We consider the Low Rank Approximation problem, where the input consists of a matrix $A \in \mathbb{...
International audienceLinear systems with structures such as Toeplitz-, Vandermonde-or Cauchy-likene...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
AbstractThis paper concerns the construction of a structured low rank matrix that is nearest to a gi...
AbstractWe consider displacements which are linear operations mapping a near-Toeplitz matrix into a ...
Algorithms are presented for least-squares approximation of Toeplitz and Hankel matrices from noise ...
Applications of semidefinite optimization in signal processing are often derived from the Kalman–Yaku...
This work is concerned with computing low-rank approximations of a matrix function $f(A)$ for a larg...
AbstractComments are made regarding the implementation of a Toeplitz-matrix inversion algorithm desc...
This paper proposes a set of piecewise Toeplitz matrices as the linear mapping/sensing operator A: R...
Abstract. We propose a superfast solver for Toeplitz linear systems based on rank structured matrix ...
AbstractAn algorithm is presented which reduces the problem of solving a Toeplitz system (1) TX=Y to...
A matrix algorithm runs at sublinear cost if the number of arithmetic operations involved is far few...
Structured linear algebra techniques are a versatile set of tools; they enable one to deal at once w...
In this thesis, we present the O(n(log n)^2) superfast linear least squares Schur algorithm (ssschur...
We consider the Low Rank Approximation problem, where the input consists of a matrix $A \in \mathbb{...
International audienceLinear systems with structures such as Toeplitz-, Vandermonde-or Cauchy-likene...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...