In pattern classification, polynomial classifiers are well-studied methods as they are capable of generating complex decision surfaces. Unfortunately, the use of multivariate polynomials is limited to kernels as in support-vector machines, because polynomials quickly become impractical for high-dimensional problems. In this paper, we effectively overcome the curse of dimensionality by employing the tensor train (TT) format to represent a polynomial classifier. Based on the structure of TTs, two learning algorithms are proposed, which involve solving different optimization problems of low computational complexity. Furthermore, we show how both regularization to prevent overfitting and parallelization, which enables the use of large training ...
We explore the potential of Tensor-Train (TT) decompositions in the context of multi-feature face or...
In pattern recognition it is desirable that the classifier be easy to obtain and evaluate. To this e...
Deep convolutional neural networks (DCNNs) are currently the method of choice both for generative, a...
Tensor, a multi-dimensional data structure, has been exploited recently in the machine learning comm...
In the machine learning field, high-dimensional data are often encountered in the real applications....
In the machine learning field, high-dimensional data are often encountered in the real applications....
Most of the existing learning algorithms take vectors as their input data. A function is then learne...
Low-rank tensors are an established framework for the parametrization of multivariate polynomials. W...
Low-rank tensors are an established framework for the parametrization of multivariate polynomials. W...
Low rank decomposition of tensors is a powerful tool for learning generative models. The uniqueness ...
Tensor representation is helpful to reduce the small sample size problem in discriminative subspace ...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
This paper is concerned with the approximation of high-dimensional functions in a statistical learni...
International audienceTensors are multidimensional data structures used to represent many real world...
International audienceTensors are multidimensional data structures used to represent many real world...
We explore the potential of Tensor-Train (TT) decompositions in the context of multi-feature face or...
In pattern recognition it is desirable that the classifier be easy to obtain and evaluate. To this e...
Deep convolutional neural networks (DCNNs) are currently the method of choice both for generative, a...
Tensor, a multi-dimensional data structure, has been exploited recently in the machine learning comm...
In the machine learning field, high-dimensional data are often encountered in the real applications....
In the machine learning field, high-dimensional data are often encountered in the real applications....
Most of the existing learning algorithms take vectors as their input data. A function is then learne...
Low-rank tensors are an established framework for the parametrization of multivariate polynomials. W...
Low-rank tensors are an established framework for the parametrization of multivariate polynomials. W...
Low rank decomposition of tensors is a powerful tool for learning generative models. The uniqueness ...
Tensor representation is helpful to reduce the small sample size problem in discriminative subspace ...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
This paper is concerned with the approximation of high-dimensional functions in a statistical learni...
International audienceTensors are multidimensional data structures used to represent many real world...
International audienceTensors are multidimensional data structures used to represent many real world...
We explore the potential of Tensor-Train (TT) decompositions in the context of multi-feature face or...
In pattern recognition it is desirable that the classifier be easy to obtain and evaluate. To this e...
Deep convolutional neural networks (DCNNs) are currently the method of choice both for generative, a...