Cluster analysis is a fundamental tool for pattern discovery of complex heterogeneous data. Prevalent clustering methods mainly focus on vector or matrix-variate data and are not applicable to general-order tensors, which arise frequently in modern scientific and business applications. Moreover, there is a gap between statistical guarantees and computational efficiency for existing tensor clustering solutions due to the nature of their non-convex formulations. In this work, we bridge this gap by developing a provable convex formulation of tensor co-clustering. Our convex co-clustering (CoCo) estimator enjoys stability guarantees and its computational and storage costs are polynomial in the size of the data. We further establish a non-asympt...
Abstract. Tensor factorizations are computationally hard problems, and in particular, often are sign...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
Cluster analysis is a fundamental tool for pattern discovery of complex heterogeneous data. Prevalen...
We present the first (to our knowledge) approximation algorithm for tensor clustering—a powerful gen...
Tensors are increasingly common in several areas such as data mining, computer graphics, and compute...
This paper explores the problem of clustering ensemble, which aims to combine multiple base clusteri...
Dynamic tensor data are becoming prevalent in numerous applications. Existing tensor clustering meth...
Tensor factorizations are computationally hard problems, and in particular, are often significantly ...
We present the first (to our knowledge) approximation algo- rithm for tensor clusteringa powerful g...
Typical worst case analysis of algorithms has led to a rich theory, but suffers from many pitfalls. ...
Statistical learning for tensors has gained increasing attention over the recent years. We will pres...
We present the first (to our knowledge) approximation algo- rithm for tensor clusteringa powerful g...
This paper is concerned with tensor clustering with the assistance of dimensionality reduction appro...
We analyze the statistical performance of a recently proposed convex tensor de-composition algorithm...
Abstract. Tensor factorizations are computationally hard problems, and in particular, often are sign...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
Cluster analysis is a fundamental tool for pattern discovery of complex heterogeneous data. Prevalen...
We present the first (to our knowledge) approximation algorithm for tensor clustering—a powerful gen...
Tensors are increasingly common in several areas such as data mining, computer graphics, and compute...
This paper explores the problem of clustering ensemble, which aims to combine multiple base clusteri...
Dynamic tensor data are becoming prevalent in numerous applications. Existing tensor clustering meth...
Tensor factorizations are computationally hard problems, and in particular, are often significantly ...
We present the first (to our knowledge) approximation algo- rithm for tensor clusteringa powerful g...
Typical worst case analysis of algorithms has led to a rich theory, but suffers from many pitfalls. ...
Statistical learning for tensors has gained increasing attention over the recent years. We will pres...
We present the first (to our knowledge) approximation algo- rithm for tensor clusteringa powerful g...
This paper is concerned with tensor clustering with the assistance of dimensionality reduction appro...
We analyze the statistical performance of a recently proposed convex tensor de-composition algorithm...
Abstract. Tensor factorizations are computationally hard problems, and in particular, often are sign...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...