Relative entropy minimizing noisy non-linear neural network to approximate stochastic processes
Relative entropy minimizing noisy non-linear neural network to approximate stochastic processes
A method is provided for designing and training noise-driven recurrent neural networks as models of stochastic processes. The method unifies and generalizes two known separate modeling approaches, Echo State Networks (ESN) and Linear Inverse Modeling (LIM), under the common principle of relative entropy minimization. The power of the new method is demonstrated on a stochastic approximation of the El Nino phenomenon studied in climate research.
Camille Marini、Gilles Wainrib、Herbert Jaeger、Mathieu N. Galtier
大气科学(气象学)计算技术、计算机技术
Camille Marini,Gilles Wainrib,Herbert Jaeger,Mathieu N. Galtier.Relative entropy minimizing noisy non-linear neural network to approximate stochastic processes[EB/OL].(2014-02-07)[2025-05-03].https://arxiv.org/abs/1402.1613.点此复制
评论