Gaussian conditional random fields for classification

被引:3
作者
Petrovic, Andrija [1 ]
Nikolic, Mladen [2 ]
Jovanovic, Milos [3 ]
Delibasic, Boris [3 ]
机构
[1] Singidunum Univ, Danijelova 32, Belgrade, Serbia
[2] Univ Belgrade, Fac Math, Studentski Trg 16, Belgrade, Serbia
[3] Univ Belgrade, Fac Org Sci, Jove Ilica 154, Belgrade, Serbia
关键词
Structured classification; Gaussian conditional random fields; Empirical Bayes; Local variational approximation; Discriminative graph-based model; MODEL;
D O I
10.1016/j.eswa.2022.118728
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Gaussian conditional random fields (GCRF) are a well-known structured model for continuous outputs that uses multiple unstructured predictors to form its features and at the same time exploits dependence structure among outputs, which is provided by a similarity measure. In this paper, a Gaussian conditional random field model for structured binary classification (GCRFBC) is proposed. The model is applicable to classification problems with undirected graphs, intractable for standard classification CRFs. The model representation of GCRFBC is extended by latent variables which yield some appealing properties. Thanks to the GCRF latent structure, the model becomes tractable, efficient and open to improvements previously applied to GCRF regression models. In addition, the model allows for reduction of noise, that might appear if structures were defined directly between discrete outputs. Two different forms of the algorithm are presented: GCRFBCb (GCRGBC - Bayesian) and GCRFBCnb (GCRFBC - non-Bayesian). The extended method of local variational approximation of sigmoid function is used for solving empirical Bayes in Bayesian GCRFBCb variant, whereas MAP value of latent variables is the basis for learning and inference in the GCRFBCnb variant. The inference in GCRFBCb is solved by Newton-Cotes formulas for one-dimensional integration. Both models are evaluated on synthetic data and real-world data. We show that both models achieve better prediction performance than unstructured predictors. Furthermore, computational and memory complexity is evaluated. Advantages and disadvantages of the proposed GCRFBCb and GCRFBCnb are discussed in detail.
引用
收藏
页数:13
相关论文
共 40 条
  • [1] Antoine P, 2015, PROJECT TITLE
  • [2] Bartholomew-Biggs M, 2008, NONLINEAR OPTIMIZATI, P1, DOI DOI 10.1017/S0962492900002518
  • [3] Bin Zia H, 2018, Arxiv, DOI arXiv:1806.05432
  • [4] Learning multi-label scene classification
    Boutell, MR
    Luo, JB
    Shen, XP
    Brown, CM
    [J]. PATTERN RECOGNITION, 2004, 37 (09) : 1757 - 1771
  • [5] Chen G, 2016, Arxiv, DOI arXiv:1612.01072
  • [6] Cotterell R., 2017, P 8 INT JOINT C NAT, V2, P91
  • [7] Davis P J., 2007, Methods of numerical integration
  • [8] Defferrard M, 2016, ADV NEUR IN, V29
  • [9] Dwivedi VP, 2022, Arxiv, DOI [arXiv:2003.00982, DOI 10.48550/ARXIV.2003.00982]
  • [10] Elisseeff A, 2002, ADV NEUR IN, V14, P681