A multilinear subspace regression model based on so called latent variable de-composition is introduced. Unlike standard regression methods which typically employ matrix (2D) data representations followed by vector subspace transfor-mations, the proposed approach uses tensor subspace transformations to model common latent variables across both the independent and dependent data. The proposed approach aims to maximize the correlation between the so derived la-tent variables and is shown to be suitable for the prediction of multidimensional dependent data from multidimensional independent data, where for the estimation of the latent variables we introduce an algorithm based on Multilinear Singular Value Decomposition (MSVD) on a specially def...
In this paper, we exploit the advantages of tensor representa-tions and propose a Supervised Multili...
session speciale "Numerical multilinear algebra: a new beginning"We will discuss how numerical multi...
In the article tensor-input/tensor-output blockwise Recursive N-way Partial Least Squares (RNPLS) re...
In this work, we introduce a new generalized nonlinear tensor regression framework called kernel-bas...
A new generalized multilinear regression model, termed the Higher-Order Partial Least Squares (HOPLS...
<p>The major bottleneck in state-of-the-art Linear Parameter Varying (LPV) subspace methods is the c...
This thesis illustrates connections between statistical models for tensors, introduces a novel linea...
Abstract. In this paper we discuss existing and new connections between la-tent variable models from...
Summary The widespread use of multi-sensor technology and the emergence of big datasets has highligh...
We propose a tensor-based approach to analyze multi-dimensional data describing sample subjects. It ...
The widespread use of multi-sensor technology and the emergence of big datasets has highlighted the ...
In this paper, we exploit the advantages of tensor representations and propose a Supervised Multilin...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
<div><p>In the article tensor-input/tensor-output blockwise Recursive N-way Partial Least Squares (R...
In the article tensor-input/tensor-output blockwise Recursive N-way Partial Least Squares (RNPLS) re...
In this paper, we exploit the advantages of tensor representa-tions and propose a Supervised Multili...
session speciale "Numerical multilinear algebra: a new beginning"We will discuss how numerical multi...
In the article tensor-input/tensor-output blockwise Recursive N-way Partial Least Squares (RNPLS) re...
In this work, we introduce a new generalized nonlinear tensor regression framework called kernel-bas...
A new generalized multilinear regression model, termed the Higher-Order Partial Least Squares (HOPLS...
<p>The major bottleneck in state-of-the-art Linear Parameter Varying (LPV) subspace methods is the c...
This thesis illustrates connections between statistical models for tensors, introduces a novel linea...
Abstract. In this paper we discuss existing and new connections between la-tent variable models from...
Summary The widespread use of multi-sensor technology and the emergence of big datasets has highligh...
We propose a tensor-based approach to analyze multi-dimensional data describing sample subjects. It ...
The widespread use of multi-sensor technology and the emergence of big datasets has highlighted the ...
In this paper, we exploit the advantages of tensor representations and propose a Supervised Multilin...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
<div><p>In the article tensor-input/tensor-output blockwise Recursive N-way Partial Least Squares (R...
In the article tensor-input/tensor-output blockwise Recursive N-way Partial Least Squares (RNPLS) re...
In this paper, we exploit the advantages of tensor representa-tions and propose a Supervised Multili...
session speciale "Numerical multilinear algebra: a new beginning"We will discuss how numerical multi...
In the article tensor-input/tensor-output blockwise Recursive N-way Partial Least Squares (RNPLS) re...