NANAOct 22, 2017

A Practical Randomized CP Tensor Decomposition

arXiv:1701.06600199 citationsh-index: 49
Originality Incremental advance
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For practitioners analyzing multiway data, this provides a faster and more memory-efficient CP decomposition algorithm.

The paper extends randomized least squares methods to tensors, drastically reducing the workload of CP-ALS without sacrificing quality, achieving improvements in speed, memory, and robustness.

The CANDECOMP/PARAFAC (CP) decomposition is a leading method for the analysis of multiway data. The standard alternating least squares algorithm for the CP decomposition (CP-ALS) involves a series of highly overdetermined linear least squares problems. We extend randomized least squares methods to tensors and show the workload of CP-ALS can be drastically reduced without a sacrifice in quality. We introduce techniques for efficiently preprocessing, sampling, and computing randomized least squares on a dense tensor of arbitrary order, as well as an efficient sampling-based technique for checking the stopping condition. We also show more generally that the Khatri-Rao product (used within the CP-ALS iteration) produces conditions favorable for direct sampling. In numerical results, we see improvements in speed, reductions in memory requirements, and robustness with respect to initialization.

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