论文标题
二维正方形iSing配置的Infocgan分类
InfoCGAN Classification of 2-Dimensional Square Ising Configurations
论文作者
论文摘要
Infocgan神经网络在二维正方形ISING配置上进行了训练,该配置在外部施加的磁场和温度下进行。该网络由两个主要子网络组成。发电机网络学会生成令人信服的Ising配置,并且歧视网络学会通过辅助网络提供的附加分类分配预测来区分“真实”和“假”配置。一些预测的分类分配显示了与Ising模型中的预期物理阶段一致,铁磁旋转和旋转阶段以及高温弱外部场相。此外,模型预测了与交叉现象相关的配置。分类概率允许一种强大的方法来估计消失场病例中的临界温度,从而显示出与已知物理学的非凡一致性。这项工作表明,使用对抗性神经网络的表示学习方法可用于识别与物理阶段强烈相似的类别,而没有原始物理配置及其所遵循的物理状况,而没有先验信息。
An InfoCGAN neural network is trained on 2-dimensional square Ising configurations conditioned on the external applied magnetic field and the temperature. The network is composed of two main sub-networks. The generator network learns to generate convincing Ising configurations and the discriminator network learns to discriminate between "real" and "fake" configurations with an additional categorical assignment prediction provided by an auxiliary network. Some of the predicted categorical assignments show agreement with the expected physical phases in the Ising model, the ferromagnetic spin-up and spin down phases as well as the high temperature weak external field phase. Additionally, configurations associated with the crossover phenomena are predicted by the model. The classification probabilities allow for a robust method of estimating the critical temperature in the vanishing field case, showing exceptional agreement with the known physics. This work indicates that a representation learning approach using an adversarial neural network can be used to identify categories that strongly resemble physical phases with no a priori information beyond raw physical configurations and the physical conditions they are subject to.