In this paper, the term tensor refers simply to a multidimensional or N-way array, and we consider how specially structured tensors allow for efficient storage and computation. First, we study sparse tensors, which have the property that the vast majority of the elements are zero. We propose storing sparse tensors using coordinate format and describe the computational efficiency of this scheme for various mathematical operations, including those typical to tensor decomposition algorithms. Second, we study factored tensors, which have the property that they can be assembled from more basic components. We consider two specific types: a Tucker tensor can be expressed as the product of a core tensor (which itself may be dense, sparse, or factor...
The product of a dense tensor with a vector in every mode except one, called a tensor-vector product...
© 2020 Owner/Author. This paper shows how to generate code that efficiently converts sparse tensors ...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Tensor and linear algebra is pervasive in data analytics and the physical sciences. Often the tensor...
© 2019 Society for Industrial and Applied Mathematics Decomposing tensors into simple terms is often...
This paper shows how to optimize sparse tensor algebraic expressions by introducing temporary tensor...
The Canonical Polyadic Decomposition (CPD) of tensors is a powerful tool for analyzing multi-wa...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Tensors, linear-algebraic extensions of matrices in arbitrary dimensions, have numerous applications...
In this paper, we consider sparse representations of multidimensional signals (tensors) by generaliz...
Abstract—Multi-dimensional arrays, or tensors, are increas-ingly found in fields such as signal proc...
Abstract. Symmetric tensor operations arise in a wide variety of computations. However, the benefits...
Sparse tensors arise in problems in science, engineering, machine learning, and data analytics. Prog...
Tensor algorithms are a rapidly growing field of research with applications in many scientific domai...
The product of a dense tensor with a vector in every mode except one, called a tensor-vector product...
© 2020 Owner/Author. This paper shows how to generate code that efficiently converts sparse tensors ...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Tensor and linear algebra is pervasive in data analytics and the physical sciences. Often the tensor...
© 2019 Society for Industrial and Applied Mathematics Decomposing tensors into simple terms is often...
This paper shows how to optimize sparse tensor algebraic expressions by introducing temporary tensor...
The Canonical Polyadic Decomposition (CPD) of tensors is a powerful tool for analyzing multi-wa...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Tensors, linear-algebraic extensions of matrices in arbitrary dimensions, have numerous applications...
In this paper, we consider sparse representations of multidimensional signals (tensors) by generaliz...
Abstract—Multi-dimensional arrays, or tensors, are increas-ingly found in fields such as signal proc...
Abstract. Symmetric tensor operations arise in a wide variety of computations. However, the benefits...
Sparse tensors arise in problems in science, engineering, machine learning, and data analytics. Prog...
Tensor algorithms are a rapidly growing field of research with applications in many scientific domai...
The product of a dense tensor with a vector in every mode except one, called a tensor-vector product...
© 2020 Owner/Author. This paper shows how to generate code that efficiently converts sparse tensors ...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...