Sampling two-dimensional spin systems with transformers
Abstract
Autoregressive Neural Networks based on dense or convolutional layers have recently been shown to be a viable strategy for generating classical spin systems. Unlike these methods, sampling with transformers is commonly considered to be computationally inefficient. In this work, we propose a novel approach to transformer-based neural samplers in which we generate not a single spin per step but groups of spins. As an additional improvement, we construct a model of approximated probabilities, further improving the efficiency of the algorithm. Despite our approach being computationally heavier than dense networks or CNN-based approaches, we were able to sample larger systems of up to 180 × 180 spins in case of the Ising model. The Effective Sample Size of our sampler is 20 times larger than that of the previous state-of-the-art neural sampler when trained for the 128 × 128 Ising model at critical temperature. Finally, we also test our algorithm on the 2D Edwards-Anderson model, where we train 64× 64 spin systems.
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