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Efficient machine-learning representations of a surface code with boundaries, defects, domain walls, and twists

机译:具有边界,缺陷,域墙和曲线的表面代码的高效机器学习表示

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Machine-learning representations of many-body quantum states have recently been introduced as an ansatz to describe the ground states and unitary evolutions of many-body quantum systems. We investigate one of the most important representations, the restricted Boltzmann machine (RBM), in the stabilizer formalism. A general method to construct RBM representations for stabilizer code states is given, and exact RBM representations for several types of stabilizer groups with the number of hidden neurons equal to or less than the number of visible neurons are presented. The result indicates that the representation is extremely efficient. Then we analyze a surface code with boundaries, defects, domain walls, and twists in full detail and find that almost all the models can be efficiently represented via the RBM ansatz: the RBM parameters of the perfect case, boundary case, and defect case are constructed analytically using the method we provide in the stabilizer formalism, and the domain wall and twist case is studied numerically. In addition, the case for Kitaev's D(Zd ) model, which is a generalized model of the surface code, is also investigated.
机译:多体量子态的机器学习表示最近已经推出了作为拟设描述基态和多体量子系统的统一的演变。我们调查中最重要的交涉,受限玻尔兹曼机(RBM)之一,在稳定形式主义。为了构建RBM表示为稳定剂代码状态的一般方法,并给出了几种类型的稳定剂基团与隐藏神经元的数量的精确RBM表示等于或小于可见光的神经元的数目被呈现。结果表明,该表示是非常有效的。然后,我们分析有边界,缺陷,畴壁和曲折的全部细节表面代码,并发现,几乎所有的车型可以通过RBM拟设有效地表示:完美的情况下,边界情况和缺陷的情况下的RBM参数构造解析使用我们在稳定剂形式主义提供的方法中,并且磁畴壁和扭曲的情况下数值研究。此外,对于Kitaev的d(ZD)模型,这是表面代码的通用模型的情况下,进行了研究。

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