Unsupervised Generative Modeling Using Matrix Product States
September 06, 2017 Β· Entered Twilight Β· π Physical Review X
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Repo contents: .gitignore, BStest, LICENSE, MNIST, MPScumulant.py, README.md, __pycache__, _config.yml, index.md, matlab_code, mps_mgpu_distSGD.py
Authors
Zhao-Yu Han, Jun Wang, Heng Fan, Lei Wang, Pan Zhang
arXiv ID
1709.01662
Category
cond-mat.stat-mech
Cross-listed
cs.LG,
quant-ph,
stat.ML
Citations
291
Venue
Physical Review X
Repository
https://github.com/congzlwag/UnsupGenModbyMPS
β 46
Last Checked
7 days ago
Abstract
Generative modeling, which learns joint probability distribution from data and generates samples according to it, is an important task in machine learning and artificial intelligence. Inspired by probabilistic interpretation of quantum physics, we propose a generative model using matrix product states, which is a tensor network originally proposed for describing (particularly one-dimensional) entangled quantum states. Our model enjoys efficient learning analogous to the density matrix renormalization group method, which allows dynamically adjusting dimensions of the tensors and offers an efficient direct sampling approach for generative tasks. We apply our method to generative modeling of several standard datasets including the Bars and Stripes, random binary patterns and the MNIST handwritten digits to illustrate the abilities, features and drawbacks of our model over popular generative models such as Hopfield model, Boltzmann machines and generative adversarial networks. Our work sheds light on many interesting directions of future exploration on the development of quantum-inspired algorithms for unsupervised machine learning, which are promisingly possible to be realized on quantum devices.
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