Shortcut Matrix Product States and its applications

arXiv:1812.05248v110 citations
Originality Incremental advance
AI Analysis

This work addresses a limitation in tensor decomposition methods for capturing long-range dependencies in high-dimensional data, though it appears incremental as it builds directly on existing MPS frameworks.

The authors tackled the problem of exponential decay of correlations in Matrix Product States (MPS) when applied to non-one-dimensional systems by proposing Shortcut Matrix Product States (SMPS), which introduce long-range interactions to significantly reduce correlation length while maintaining computational efficiency, as demonstrated in applications like function fitting and generative modeling.

Matrix Product States (MPS), also known as Tensor Train (TT) decomposition in mathematics, has been proposed originally for describing an (especially one-dimensional) quantum system, and recently has found applications in various applications such as compressing high-dimensional data, supervised kernel linear classifier, and unsupervised generative modeling. However, when applied to systems which are not defined on one-dimensional lattices, a serious drawback of the MPS is the exponential decay of the correlations, which limits its power in capturing long-range dependences among variables in the system. To alleviate this problem, we propose to introduce long-range interactions, which act as shortcuts, to MPS, resulting in a new model \textit{ Shortcut Matrix Product States} (SMPS). When chosen properly, the shortcuts can decrease significantly the correlation length of the MPS, while preserving the computational efficiency. We develop efficient training methods of SMPS for various tasks, establish some of their mathematical properties, and show how to find a good location to add shortcuts. Finally, using extensive numerical experiments we evaluate its performance in a variety of applications, including function fitting, partition function calculation of $2-$d Ising model, and unsupervised generative modeling of handwritten digits, to illustrate its advantages over vanilla matrix product states.

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