A joint learning framework for Gaussian processes regression and graph learning

被引:3
|
作者
Miao, Xiaoyu [1 ]
Jiang, Aimin [1 ]
Zhu, Yanping [2 ]
Kwan, Hon Keung [3 ]
机构
[1] Hohai Univ, Coll Internet Things Engineer, Changzhou, Peoples R China
[2] Changzhou Univ, Sch Microelect & Control Engineer, Changzhou, Peoples R China
[3] Univ Windsor, Dept Elect & Comp Engineer, Windsor, ON, Canada
关键词
Alternating optimization; Gaussian process regression; Maximum likelihood estimate; Quadratic program; Kernel functions; Graph topology; SIGNAL;
D O I
10.1016/j.sigpro.2022.108708
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
In the traditional Gaussian process regression (GPR), covariance matrix of outputs is dominated by a given kernel function, that generally depends on pairwise distance or correlation between sample inputs. Never-theless, this kind of models hardly utilize high-order statistical properties or globally topological informa-tion among sample inputs, undermining their prediction capability. To remedy this defect, we propose in this paper a novel GPR framework combining the MLE of Gaussian processes with graph learning. In our model, sample inputs are modeled by a weighted graph, whose topology is directly inferred from sample inputs based on either the smoothness assumption or the self-representative property. Such global infor-mation can be viewed as a kind of knowledge a prior, guiding the process of learning hyper-parameters of the chosen kernel function and the construction of covariance matrix of GPR model outputs. In practice, hyper-parameters of the GPR model and adjacency matrix of the graph can be trained by the alternat-ing optimization. Theoretical analyses regarding solutions to graph learning are also presented to reduce computational complexity. Experimental results demonstrate that the proposed framework can achieve competitive performance in terms of prediction accuracies and computational efficiency, compared to state-of-the-art GPR algorithms. (c) 2022 Elsevier B.V. All rights reserved.
引用
收藏
页数:11
相关论文
共 50 条
  • [11] Joint graph learning from Gaussian observations in the presence of hidden nodes
    Rey, Samuel
    Navarro, Madeline
    Buciulea, Andrei
    Segarra, Santiago
    Marques, Antonio G.
    2022 56TH ASILOMAR CONFERENCE ON SIGNALS, SYSTEMS, AND COMPUTERS, 2022, : 53 - 57
  • [12] Active learning of Gaussian processes with manifold-preserving graph reduction
    Jin Zhou
    Shiliang Sun
    Neural Computing and Applications, 2014, 25 : 1615 - 1625
  • [13] Latent Gaussian Processes Based Graph Learning for Urban Traffic Prediction
    Wang, Xu
    Wang, Pengkun
    Wang, Binwu
    Zhang, Yudong
    Zhou, Zhengyang
    Bai, Lei
    Wang, Yang
    IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2024, 73 (01) : 282 - 294
  • [14] Active learning of Gaussian processes with manifold-preserving graph reduction
    Zhou, Jin
    Sun, Shiliang
    NEURAL COMPUTING & APPLICATIONS, 2014, 25 (7-8): : 1615 - 1625
  • [15] A unified active learning framework for annotating graph data for regression task
    Samoaa, Peter
    Aronsson, Linus
    Longa, Antonio
    Leitner, Philipp
    Chehreghani, Morteza Haghir
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 138
  • [16] Joint Sparse Representation and Embedding Propagation Learning: A Framework for Graph-Based Semisupervised Learning
    Pei, Xiaobing
    Chen, Chuanbo
    Guan, Yue
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2017, 28 (12) : 2949 - 2960
  • [17] Learning curves for Gaussian processes
    Sollich, P
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 11, 1999, 11 : 344 - 350
  • [18] Learning a Propagable Graph for Semisupervised Learning: Classification and Regression
    Ni, Bingbing
    Yan, Shuicheng
    Kassim, Ashraf A.
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2012, 24 (01) : 114 - 126
  • [19] Gaussian processes in machine learning
    Rasmussen, CE
    ADVANCED LECTURES ON MACHINE LEARNING, 2004, 3176 : 63 - 71
  • [20] Lifelong Learning with Gaussian Processes
    Clingerman, Christopher
    Eaton, Eric
    MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, ECML PKDD 2017, PT II, 2017, 10535 : 690 - 704