Optimal Real-Space Renormalization-Group Transformations with Artificial Neural Networks
ORAL
Abstract
We introduce a general method for optimizing real-space renormalization-group transformations to study the critical properties of a classical system.The scheme is based on minimizing the Kullback-Leibler divergence between the distribution of the system and the normalizing factor of the transformation parametrized by a restricted Boltzmann machine. We compute the thermal critical exponent of the two-dimensional Ising model using the trained optimal projector and obtain a very accurate exponent yt=1.0001(11) after the first step of the transformation.
*MOST of Taiwan Grants numbers 108-2112-M-002 -020 -MY3, 107-2112-M-002 -016 -MY3
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Presenters
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Ying-Jer Kao
- Natl Taiwan Univ