How can we efficiently decompose a tensor into sparse factors, when the data do not fit in memory? Tensor decompositions have gained a steadily increasing popularity in data-mining applications; however, the cur-rent state-of-art decomposition algorithms operate on main memory and do not scale to truly large datasets. In this work, we propose PARCUBE, a new and highly parallelizable method for speeding up tensor decom-positions that is well suited to produce sparse approximations. Experiments with even moderately large data indicate over 90 % sparser outputs and 14 times faster execution, with approximation error close to the current state of the art irrespective of computation and memory requirements. We provide theoretical guarantees for ...
University of Minnesota Ph.D. dissertation. April 2019. Major: Computer Science. Advisor: George Ka...
Tensors are data structures indexed along three or more dimensions. Tensors have found increasing us...
This dissertation presents novel algorithmic techniques and data structures to help build scalable t...
International audienceTensor factorization has been increasingly used to address various problems in...
Abstract—Multi-dimensional arrays, or tensors, are increas-ingly found in fields such as signal proc...
International audienceWe investigate an efficient parallelization of the most common iterative spars...
© 2017 IEEE. Tensors could be very suitable for representing multidimensional data. In recent years,...
Tensor CANDECOMP/PARAFAC (CP) decomposition has wide applications in statistical learning of latent ...
The Canonical Polyadic Decomposition (CPD) of tensors is a powerful tool for analyzing multi-way dat...
Given an irregular dense tensor, how can we efficiently analyze it? An irregular tensor is a collect...
Abstract—Tensors are data structures indexed along three or more dimensions. Tensors have found incr...
© 2019 Society for Industrial and Applied Mathematics Decomposing tensors into simple terms is often...
International audience—We investigate an efficient parallelization of a class of algorithms for the ...
Abstract—Low-rank tensor decomposition has many applica-tions in signal processing and machine learn...
The problem of missing data is ubiquitous in domains such as biomedical signal processing, network t...
University of Minnesota Ph.D. dissertation. April 2019. Major: Computer Science. Advisor: George Ka...
Tensors are data structures indexed along three or more dimensions. Tensors have found increasing us...
This dissertation presents novel algorithmic techniques and data structures to help build scalable t...
International audienceTensor factorization has been increasingly used to address various problems in...
Abstract—Multi-dimensional arrays, or tensors, are increas-ingly found in fields such as signal proc...
International audienceWe investigate an efficient parallelization of the most common iterative spars...
© 2017 IEEE. Tensors could be very suitable for representing multidimensional data. In recent years,...
Tensor CANDECOMP/PARAFAC (CP) decomposition has wide applications in statistical learning of latent ...
The Canonical Polyadic Decomposition (CPD) of tensors is a powerful tool for analyzing multi-way dat...
Given an irregular dense tensor, how can we efficiently analyze it? An irregular tensor is a collect...
Abstract—Tensors are data structures indexed along three or more dimensions. Tensors have found incr...
© 2019 Society for Industrial and Applied Mathematics Decomposing tensors into simple terms is often...
International audience—We investigate an efficient parallelization of a class of algorithms for the ...
Abstract—Low-rank tensor decomposition has many applica-tions in signal processing and machine learn...
The problem of missing data is ubiquitous in domains such as biomedical signal processing, network t...
University of Minnesota Ph.D. dissertation. April 2019. Major: Computer Science. Advisor: George Ka...
Tensors are data structures indexed along three or more dimensions. Tensors have found increasing us...
This dissertation presents novel algorithmic techniques and data structures to help build scalable t...