Meng Xiangyi, Yang Tong
Center for Complex Network Research and Department of Physics, Northeastern University, Boston, MA 02115, USA.
Department of Physics, Boston University, Boston, MA 02215, USA.
Entropy (Basel). 2021 Nov 11;23(11):1491. doi: 10.3390/e23111491.
Traditional machine-learning methods are inefficient in capturing chaos in nonlinear dynamical systems, especially when the time difference Δt between consecutive steps is so large that the extracted time series looks apparently random. Here, we introduce a new long-short-term-memory (LSTM)-based recurrent architecture by tensorizing the cell-state-to-state propagation therein, maintaining the long-term memory feature of LSTM, while simultaneously enhancing the learning of short-term nonlinear complexity. We stress that the global minima of training can be most efficiently reached by our tensor structure where all nonlinear terms, up to some polynomial order, are treated explicitly and weighted equally. The efficiency and generality of our architecture are systematically investigated and tested through theoretical analysis and experimental examinations. In our design, we have explicitly used two different many-body entanglement structures-matrix product states (MPS) and the multiscale entanglement renormalization ansatz (MERA)-as physics-inspired tensor decomposition techniques, from which we find that MERA generally performs better than MPS, hence conjecturing that the learnability of chaos is determined not only by the number of free parameters but also the tensor complexity-recognized as how entanglement entropy scales with varying matricization of the tensor.
传统的机器学习方法在捕捉非线性动力系统中的混沌现象时效率低下,尤其是当连续步骤之间的时间差Δt 非常大,以至于提取的时间序列看起来明显随机时。在此,我们通过对其中的细胞状态到状态传播进行张量化,引入了一种基于长短期记忆(LSTM)的新循环架构,保持了 LSTM 的长期记忆特性,同时增强了对短期非线性复杂性的学习。我们强调,通过我们的张量结构可以最有效地达到训练的全局最小值,其中所有非线性项,直到某个多项式阶数,都被明确处理并平等加权。我们通过理论分析和实验检验系统地研究和测试了我们架构的效率和通用性。在我们的设计中,我们明确使用了两种不同的多体纠缠结构——矩阵乘积态(MPS)和多尺度纠缠重整化假设(MERA)——作为受物理启发的张量分解技术,从中我们发现 MERA 通常比 MPS 表现更好,因此推测混沌的可学习性不仅取决于自由参数的数量,还取决于张量复杂性——被认为是纠缠熵如何随着张量的不同矩阵化而缩放。