In this paper, we introduce a type of tensor neural network. For the first time, we propose its numerical integration scheme and prove the computational complexity to be the polynomial scale of the dimension. Based on the tensor product structure, we develop an efficient numerical integration method by using fixed quadrature points for the functions of the tensor neural network. The corresponding machine learning method is also introduced for solving high-dimensional problems. Some numerical examples are also provided to validate the theoretical results and the numerical algorithm.
翻译:本文介绍了一类张量神经网络。我们首次提出了其数值积分方案,并证明了计算复杂度为维度的多项式规模。基于张量积结构,我们利用张量神经网络的函数来设计了一种有效的数值积分方法,其采用固定的求积点。同时,我们还介绍了相应的机器学习方法,用于解决高维问题。最后,我们提供了一些数值实例,以验证理论结果和数值算法。