Echo State Gaussian Process

被引:90
|
作者
Chatzis, Sotirios P. [1 ]
Demiris, Yiannis [1 ]
机构
[1] Univ London Imperial Coll Sci Technol & Med, Dept Elect & Elect Engn, London SW7 2BT, England
来源
IEEE TRANSACTIONS ON NEURAL NETWORKS | 2011年 / 22卷 / 09期
关键词
Bayesian inference; Gaussian process; reservoir computing; sequential data modeling;
D O I
10.1109/TNN.2011.2162109
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
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.
引用
收藏
页码:1435 / 1445
页数:11
相关论文
共 50 条
  • [1] Echo State Network and Echo State Gaussian Process for Non-Line-of-Sight Target Tracking
    Yang, Xiaofeng
    Zhao, Feng
    IEEE SYSTEMS JOURNAL, 2020, 14 (03): : 3885 - 3892
  • [2] A Gaussian Process Echo State Networks Model for Time Series Forecasting
    Liu, Y.
    Zhao, J.
    Wang, W.
    PROCEEDINGS OF THE 2013 JOINT IFSA WORLD CONGRESS AND NAFIPS ANNUAL MEETING (IFSA/NAFIPS), 2013, : 643 - 648
  • [3] Iterative Temporal Learning and Prediction with the Sparse Online Echo State Gaussian Process
    Soh, Harold
    Demiris, Yiannis
    2012 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2012,
  • [4] Prediction of Multivariate Time Series with Sparse Gaussian Process Echo State Network
    Han, Min
    Ren, Weijie
    Xu, Meiling
    PROCEEDINGS OF THE 2013 FOURTH INTERNATIONAL CONFERENCE ON INTELLIGENT CONTROL AND INFORMATION PROCESSING (ICICIP), 2013, : 510 - 513
  • [5] Multiple Sensors Based Prognostics With Prediction Interval Optimization via Echo State Gaussian Process
    Liu, Chongdang
    Zhang, Linxuan
    Liao, Yuan
    Wu, Cheng
    Peng, Gongzhuang
    IEEE ACCESS, 2019, 7 : 112397 - 112409
  • [6] Design of Nonlinear Predictive Control for Pneumatic Muscle Actuator Based on Echo State Gaussian Process
    Cao, Yu
    Huang, Jian
    Ding, Gangzheng
    Wang, Yongji
    IFAC PAPERSONLINE, 2017, 50 (01): : 1952 - 1957
  • [7] A Visual Servo-Based Predictive Control With Echo State Gaussian Process for Soft Bending Actuator
    Cao, Yu
    Huang, Jian
    Ru, Hongge
    Chen, Wenbin
    Xiong, Cai-Hua
    IEEE-ASME TRANSACTIONS ON MECHATRONICS, 2021, 26 (01) : 574 - 585
  • [8] An Echo State Gaussian Process-Based Nonlinear Model Predictive Control for Pneumatic Muscle Actuators
    Huang, Jian
    Cao, Yu
    Xiong, Caihua
    Zhang, Hai-Tao
    IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING, 2019, 16 (03) : 1071 - 1084
  • [9] Gaussian process modeling for image distortion correction in echo planar imaging
    Stevick, Joseph W.
    Harding, Sally G.
    Paquet, Ulrich
    Ansorge, Richard E.
    Carpenter, T. Adrian
    Williams, Guy B.
    MAGNETIC RESONANCE IN MEDICINE, 2008, 59 (03) : 598 - 606
  • [10] Identification of Gaussian Process State Space Models
    Eleftheriadis, Stefanos
    Nicholson, Thomas F. W.
    Deisenroth, Marc P.
    Hensman, James
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 30 (NIPS 2017), 2017, 30