We argue and demonstrate that projected entangled-pair states (PEPS) outperform matrix product states significantly for the task of generative modeling of datasets with an intrinsic two-dimensional structure such as images. Our approach builds on a recently introduced algorithm for sampling PEPS, which allows for the efficient optimization and sampling of the distributions.
翻译:我们争论并证明,预测的缠绕-孔状状态(PEPS)优于矩阵产品(PEPS)非常有助于以图像等固有的二维结构对数据集进行基因建模。 我们的方法基于最近引入的PEPS取样算法,该算法允许高效优化和取样分布。