Supervised Training of Neural-Network Quantum States for the Next Nearest Neighbor Ising model
Supervised Training of Neural-Network Quantum States for the Next Nearest Neighbor Ising model
Different neural network architectures can be unsupervisedly or supervisedly trained to represent quantum states. We explore and compare different strategies for the supervised training of feed forward neural network quantum states. We empirically and comparatively evaluate the performance of feed forward neural network quantum states in different phases of matter for variants of the architecture, for different hyper-parameters, and for two different loss functions, to which we refer as \emph{mean-squared error} and \emph{overlap}, respectively. We consider the next-nearest neighbor Ising model for the diversity of its phases and focus on its paramagnetic, ferromagnetic, and pair-antiferromagnetic phases. We observe that the overlap loss function allows better training of the model across all phases, provided a rescaling of the neural network.
Remmy Zen、Zheyu Wu、Heitor P. Casagrande、Dario Poletti、St¨|phane Bressan
物理学计算技术、计算机技术
Remmy Zen,Zheyu Wu,Heitor P. Casagrande,Dario Poletti,St¨|phane Bressan.Supervised Training of Neural-Network Quantum States for the Next Nearest Neighbor Ising model[EB/OL].(2023-05-05)[2025-08-03].https://arxiv.org/abs/2305.03394.点此复制
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