Chatzis Sotirios P, Demiris Yiannis
Department of Electrical and Electronic Engineering, Imperial College London, London, U.K.
IEEE Trans Neural Netw. 2011 Sep;22(9):1435-45. doi: 10.1109/TNN.2011.2162109. Epub 2011 Jul 29.
Echo state networks (ESNs) constitute a novel approach to recurrent neural network (RNN) training, with an RNN (the reservoir) being generated randomly, and only a readout being trained using a simple computationally efficient algorithm. ESNs have greatly facilitated the practical application of RNNs, outperforming classical approaches on a number of benchmark tasks. In this paper, we introduce a novel Bayesian approach toward ESNs, the echo state Gaussian process (ESGP). The ESGP combines the merits of ESNs and Gaussian processes to provide a more robust alternative to conventional reservoir computing networks while also offering a measure of confidence on the generated predictions (in the form of a predictive distribution). We exhibit the merits of our approach in a number of applications, considering both benchmark datasets and real-world applications, where we show that our method offers a significant enhancement in the dynamical data modeling capabilities of ESNs. Additionally, we also show that our method is orders of magnitude more computationally efficient compared to existing Gaussian process-based methods for dynamical data modeling, without compromises in the obtained predictive performance.
回声状态网络(ESN)是一种用于递归神经网络(RNN)训练的新方法,其中RNN(蓄水池)是随机生成的,并且仅使用简单的计算高效算法对读出层进行训练。ESN极大地促进了RNN的实际应用,在许多基准任务上优于传统方法。在本文中,我们介绍了一种针对ESN的新型贝叶斯方法,即回声状态高斯过程(ESGP)。ESGP结合了ESN和高斯过程的优点,为传统的蓄水池计算网络提供了一种更强大的替代方案,同时还提供了对生成预测的置信度度量(以预测分布的形式)。我们在许多应用中展示了我们方法的优点,包括基准数据集和实际应用,我们表明我们的方法在ESN的动态数据建模能力方面有显著增强。此外,我们还表明,与现有的基于高斯过程的动态数据建模方法相比,我们的方法在计算效率上提高了几个数量级,同时在获得的预测性能上没有妥协。