Efficient Leverage Score Sampling for Tensor Train Decomposition, Osman Asif Malik
–Neural Information Processing Systems
Tensor Train (TT) decomposition is widely used in the machine learning and quantum physics communities as a popular tool to efficiently compress high-dimensional tensor data. In this paper, we propose an efficient algorithm to accelerate computing the TT decomposition with the Alternating Least Squares (ALS) algorithm relying on exact leverage scores sampling. For this purpose, we propose a data structure that allows us to efficiently sample from the tensor with time complexity logarithmic in the tensor size.
Neural Information Processing Systems
May-30-2025, 21:31:04 GMT
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