Tensor train decomposition is widely used in machine learning and quantum physics due to its concise representation of high-dimensional tensors, overcoming the curse of dimensionality. Cross approximation-originally developed for representing a matrix from a set of selected rows and columns-is an efficient method for constructing a tensor train decomposition of a tensor from few of its entries. While tensor train cross approximation has achieved remarkable performance in practical applications, its theoretical analysis, in particular regarding the error of the approximation, is so far lacking. To our knowledge, existing results only provide element-wise approximation accuracy guarantees, which lead to a very loose bound when extended to the entire tensor. In this paper, we bridge this gap by providing accuracy guarantees in terms of the entire tensor for both exact and noisy measurements. Our results illustrate how the choice of selected subtensors affects the quality of the cross approximation and that the approximation error caused by model error and/or measurement error may not grow exponentially with the order of the tensor. These results are verified by numerical experiments, and may have important implications for the usefulness of cross approximations for high-order tensors, such as those encountered in the description of quantum many-body states.
翻译:在机器学习和量物理中广泛使用电锯列分解法,这是因为它简明地代表了高维抗量,克服了维度的诅咒。交叉近似原是代表一组选定行和列的矩阵而开发的。交叉近似原为代表一组选定行和列组成的矩阵,这是从几个条目中建造一个高压列分解法的有效方法。虽然高压列交叉近似在实际应用中取得了显著的成绩,但其理论分析,特别是近似误差方面的分析,目前还很缺乏。据我们所知,现有结果只提供元素明智近近似精确度保证,在扩展至整个发压时,这种保证会非常松散。在本文件中,我们通过提供整个发压和噪音测量的准确性保证来弥补这一差距。我们的结果说明,选定子电压器的选择会如何影响交叉近似质量,模型错误和/或测量误差造成的近似误差,可能不会随着电压的顺序而指数化成指数。这些结果通过数字实验得到验证,并且可能对高阶抗力的抗控器(如在量质状态描述中遇到的那些)的反位的反近近近似作用有重要的影响。