Tensor-Matrix Products with a Compressed Sparse Tensor
2015-10-12
Loading...
View/Download File
Persistent link to this item
Statistics
View StatisticsJournal Title
Journal ISSN
Volume Title
Title
Tensor-Matrix Products with a Compressed Sparse Tensor
Alternative title
Authors
Published Date
2015-10-12
Publisher
Type
Report
Abstract
The Canonical Polyadic Decomposition (CPD) of tensors is a powerful
tool for analyzing multi-way data and is used extensively to analyze very large
and extremely sparse datasets. The bottleneck of computing the CPD is multiplying
a sparse tensor by several dense matrices. Algorithms for tensor-matrix products
fall into two classes. The first class saves floating point operations by storing
a compressed tensor for each dimension of the data. These methods are fast but
suffer high memory costs. The second class uses a single uncompressed tensor at
the cost of additional floating point operations. In this work, we bridge the gap
between the two approaches and introduce the compressed sparse fiber (CSF) a data
structure for sparse tensors along with a novel parallel algorithm for tensor-matrix
multiplication. CSF offers similar operation reductions as existing compressed
methods while using only a single tensor structure. We validate our contributions
with experiments comparing against state-of-the-art methods on a diverse set of
datasets. Our work uses 58% less memory than the state-of-the-art while achieving
81% of the parallel performance on 16 threads.
Keywords
Description
Related to
Replaces
License
Series/Report Number
Technical Report; 15-015
Funding information
Isbn identifier
Doi identifier
Previously Published Citation
Other identifiers
Suggested citation
Smith, Shaden; Karypis, George. (2015). Tensor-Matrix Products with a Compressed Sparse Tensor. Retrieved from the University Digital Conservancy, https://hdl.handle.net/11299/215980.
Content distributed via the University Digital Conservancy may be subject to additional license and use restrictions applied by the depositor. By using these files, users agree to the Terms of Use. Materials in the UDC may contain content that is disturbing and/or harmful. For more information, please see our statement on harmful content in digital repositories.