We analyze the problem of high-order polynomial approximation from a many-body physics perspective, and demonstrate the descriptive power of entanglement entropy in capturing model capacity and task complexity. Instantiated with a high-order nonlinear dynamics modeling problem, tensor-network models are investigated and exhibit promising modeling advantages. This novel perspective establish a connection between quantum information and functional approximation, which worth further exploration in future research.
翻译:我们从许多身体物理学的角度分析高阶多线近似问题,并展示了在捕捉模型容量和任务复杂性方面的缠绕酶的描述力。 以高阶非线性动态模型问题为证据,对高阶多线性网络模型进行了调查,并展示了有希望的模型优势。 这种新颖的观点在量子信息与功能近似之间建立起了联系,值得在未来的研究中进一步探讨。