Robust tensor CP decomposition involves decomposing a tensor into low rank and sparse components. We propose a novel non-convex iterative algorithm with guaranteed recovery. It alternates between low-rank CP decomposition through gradient ascent (a variant of the tensor power method), and hard thresholding of the residual. We prove convergence to the globally optimal solution under natural incoherence conditions on the low rank component, and bounded level of sparse perturbations. We compare our method with natural baselines which apply robust matrix PCA either to the {\em flattened} tensor, or to the matrix slices of the tensor. Our method can provably handle a far greater level of perturbation when the sparse tensor is block-structured. T...
A framework for reliable seperation of a low-rank subspace from grossly corrupted multi-dimensional ...
In this paper, we study the statistical performance of robust tensor decomposition with gross corrup...
In this paper, we provide local and global convergence guarantees for recovering CP (Candecomp/Paraf...
Robust tensor CP decomposition involves decomposing a tensor into low rank and sparse components. We...
Robust tensor CP decomposition involves decomposing a tensor into low rank and sparse components. We...
This paper studies the Tensor Robust Principal Component (TRPCA) problem which extends the known Rob...
This paper studies the Tensor Robust Principal Component (TRPCA) problem which extends the known Rob...
Sparse modeling is a rapidly developing topic that arises frequently in areas such as machine learni...
The CP decomposition for high dimensional non-orthogonal spiked tensors is an important problem with...
Low rank decomposition of tensors is a powerful tool for learning generative models. The uniqueness ...
Tensors, a.k.a. multi-dimensional arrays, arise naturally when modeling higher-order objects and rel...
Low-rank tensor recovery is an interesting subject from both the theoretical and application point o...
Tensor robust principal component analysis (TRPCA) is a promising way for low-rank tensor recovery, ...
Abstract. Higher-order low-rank tensors naturally arise in many applications including hyperspectral...
We present a novel analysis of the dynamics of tensor power iterations in the overcomplete regime wh...
A framework for reliable seperation of a low-rank subspace from grossly corrupted multi-dimensional ...
In this paper, we study the statistical performance of robust tensor decomposition with gross corrup...
In this paper, we provide local and global convergence guarantees for recovering CP (Candecomp/Paraf...
Robust tensor CP decomposition involves decomposing a tensor into low rank and sparse components. We...
Robust tensor CP decomposition involves decomposing a tensor into low rank and sparse components. We...
This paper studies the Tensor Robust Principal Component (TRPCA) problem which extends the known Rob...
This paper studies the Tensor Robust Principal Component (TRPCA) problem which extends the known Rob...
Sparse modeling is a rapidly developing topic that arises frequently in areas such as machine learni...
The CP decomposition for high dimensional non-orthogonal spiked tensors is an important problem with...
Low rank decomposition of tensors is a powerful tool for learning generative models. The uniqueness ...
Tensors, a.k.a. multi-dimensional arrays, arise naturally when modeling higher-order objects and rel...
Low-rank tensor recovery is an interesting subject from both the theoretical and application point o...
Tensor robust principal component analysis (TRPCA) is a promising way for low-rank tensor recovery, ...
Abstract. Higher-order low-rank tensors naturally arise in many applications including hyperspectral...
We present a novel analysis of the dynamics of tensor power iterations in the overcomplete regime wh...
A framework for reliable seperation of a low-rank subspace from grossly corrupted multi-dimensional ...
In this paper, we study the statistical performance of robust tensor decomposition with gross corrup...
In this paper, we provide local and global convergence guarantees for recovering CP (Candecomp/Paraf...