Tensor CANDECOMP/PARAFAC (CP) decomposition has wide applications in statistical learning of latent variable models and in data mining. In this paper, we propose fast and randomized tensor CP decomposition algorithms based on sketching. We build on the idea of count sketches, but introduce many novel ideas which are unique to tensors. We develop novel methods for randomized com-putation of tensor contractions via FFTs, without explicitly forming the tensors. Such tensor contractions are encountered in decomposition methods such as ten-sor power iterations and alternating least squares. We also design novel colliding hashes for symmetric tensors to further save time in computing the sketches. We then combine these sketching ideas with existi...
Tensors are becoming increasingly common in data mining, and con-sequently, tensor factorizations ar...
Low rank decomposition of tensors is a powerful tool for learning generative models. The uniqueness ...
© 2019 Dr. Shuo ZhouTensors are multi-way arrays that can be used to represent multi-dimensional dat...
Tensor CANDECOMP/PARAFAC (CP) decomposition has wide applications in statistical learning of latent ...
© 2017 IEEE. Tensors could be very suitable for representing multidimensional data. In recent years,...
International audienceTensor factorization has been increasingly used to address various problems in...
How can we efficiently decompose a tensor into sparse factors, when the data do not fit in memory? T...
Linear algebra is the foundation of machine learning, especially for handling big data. We want to e...
Abstract—CANDECOMP/PARAFAC (CP) has found numer-ous applications in wide variety of areas such as in...
Given an irregular dense tensor, how can we efficiently analyze it? An irregular tensor is a collect...
We propose novel tensor decomposition methods that advocate both properties of sparsity and robustne...
© 2015 IEEE. For the analysis of large-scale datasets one often assumes simple structures. In the ca...
Sketching is a randomized dimensionalityreduction method that aims to preserve relevant information ...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
We describe an approach to speed-up inference with latent-variable PCFGs, which have been shown to b...
Tensors are becoming increasingly common in data mining, and con-sequently, tensor factorizations ar...
Low rank decomposition of tensors is a powerful tool for learning generative models. The uniqueness ...
© 2019 Dr. Shuo ZhouTensors are multi-way arrays that can be used to represent multi-dimensional dat...
Tensor CANDECOMP/PARAFAC (CP) decomposition has wide applications in statistical learning of latent ...
© 2017 IEEE. Tensors could be very suitable for representing multidimensional data. In recent years,...
International audienceTensor factorization has been increasingly used to address various problems in...
How can we efficiently decompose a tensor into sparse factors, when the data do not fit in memory? T...
Linear algebra is the foundation of machine learning, especially for handling big data. We want to e...
Abstract—CANDECOMP/PARAFAC (CP) has found numer-ous applications in wide variety of areas such as in...
Given an irregular dense tensor, how can we efficiently analyze it? An irregular tensor is a collect...
We propose novel tensor decomposition methods that advocate both properties of sparsity and robustne...
© 2015 IEEE. For the analysis of large-scale datasets one often assumes simple structures. In the ca...
Sketching is a randomized dimensionalityreduction method that aims to preserve relevant information ...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
We describe an approach to speed-up inference with latent-variable PCFGs, which have been shown to b...
Tensors are becoming increasingly common in data mining, and con-sequently, tensor factorizations ar...
Low rank decomposition of tensors is a powerful tool for learning generative models. The uniqueness ...
© 2019 Dr. Shuo ZhouTensors are multi-way arrays that can be used to represent multi-dimensional dat...