Jaeger Herbert, Haas Harald
International University Bremen, Bremen D-28759, Germany.
Science. 2004 Apr 2;304(5667):78-80. doi: 10.1126/science.1091277.
We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs employ artificial recurrent neural networks in a way that has recently been proposed independently as a learning mechanism in biological brains. The learning method is computationally efficient and easy to use. On a benchmark task of predicting a chaotic time series, accuracy is improved by a factor of 2400 over previous techniques. The potential for engineering applications is illustrated by equalizing a communication channel, where the signal error rate is improved by two orders of magnitude.
我们提出了一种用于学习非线性系统的方法——回声状态网络(ESN)。ESN采用人工递归神经网络,其方式最近已被独立提出,作为生物大脑中的一种学习机制。该学习方法计算效率高且易于使用。在预测混沌时间序列的基准任务上,与先前技术相比,准确率提高了2400倍。通过均衡通信信道展示了其在工程应用中的潜力,在此应用中信号错误率提高了两个数量级。