Improving probabilistic inference in graphical models with determinism and cycles

被引:0
|
作者
Mohamed-Hamza Ibrahim
Christopher Pal
Gilles Pesant
机构
[1] École Polytechnique de Montréal,Department of Computer and Software Engineering
来源
Machine Learning | 2017年 / 106卷
关键词
Markov logic; Message passing; Constraint propagation; Statistical relational learning; Expectation maximization;
D O I
暂无
中图分类号
学科分类号
摘要
Many important real-world applications of machine learning, statistical physics, constraint programming and information theory can be formulated using graphical models that involve determinism and cycles. Accurate and efficient inference and training of such graphical models remains a key challenge. Markov logic networks (MLNs) have recently emerged as a popular framework for expressing a number of problems which exhibit these properties. While loopy belief propagation (LBP) can be an effective solution in some cases; unfortunately, when both determinism and cycles are present, LBP frequently fails to converge or converges to inaccurate results. As such, sampling based algorithms have been found to be more effective and are more popular for general inference tasks in MLNs. In this paper, we introduce Generalized arc-consistency Expectation Maximization Message-Passing (GEM-MP), a novel message-passing approach to inference in an extended factor graph that combines constraint programming techniques with variational methods. We focus our experiments on Markov logic and Ising models but the method is applicable to graphical models in general. In contrast to LBP, GEM-MP formulates the message-passing structure as steps of variational expectation maximization. Moreover, in the algorithm we leverage the local structures in the factor graph by using generalized arc consistency when performing a variational mean-field approximation. Thus each such update increases a lower bound on the model evidence. Our experiments on Ising grids, entity resolution and link prediction problems demonstrate the accuracy and convergence of GEM-MP over existing state-of-the-art inference algorithms such as MC-SAT, LBP, and Gibbs sampling, as well as convergent message passing algorithms such as the concave–convex procedure, residual BP, and the L2-convex method.
引用
收藏
页码:1 / 54
页数:53
相关论文
共 50 条
  • [31] Bayesian Inference in Nonparanormal Graphical Models
    Mulgrave, Jami J.
    Ghosal, Subhashis
    BAYESIAN ANALYSIS, 2020, 15 (02): : 449 - 475
  • [32] Probabilistic Variational Bounds for Graphical Models
    Liu, Qiang
    Fisher, John, III
    Ihler, Alexander
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 28 (NIPS 2015), 2015, 28
  • [33] Optical Implementation of Probabilistic Graphical Models
    Blanche, Pierre-Alexandre
    Babaeian, Masoud
    Glick, Madeleine
    Wissinger, John
    Norwood, Robert
    Peyghambarian, Nasser
    Neifeld, Mark
    Thamvichai, Ratchaneekorn
    2016 IEEE INTERNATIONAL CONFERENCE ON REBOOTING COMPUTING (ICRC), 2016,
  • [34] Probabilistic graphical models for computational biomedicine
    Moreau, Y
    Antal, P
    Fannes, G
    De Moor, B
    METHODS OF INFORMATION IN MEDICINE, 2003, 42 (02) : 161 - 168
  • [35] Teaching Probabilistic Graphical Models with OpenMarkov
    Javier Diez, Francisco
    Arias, Manuel
    Perez-Martin, Jorge
    Luque, Manuel
    MATHEMATICS, 2022, 10 (19)
  • [36] New trends in probabilistic graphical models
    Gámez, JA
    Salmerón, A
    INTERNATIONAL JOURNAL OF UNCERTAINTY FUZZINESS AND KNOWLEDGE-BASED SYSTEMS, 2004, 12 : V - VI
  • [37] The Hugin Tool for probabilistic graphical models
    Madsen, AL
    Jensen, F
    Kjaerulff, UB
    Lang, M
    INTERNATIONAL JOURNAL ON ARTIFICIAL INTELLIGENCE TOOLS, 2005, 14 (03) : 507 - 543
  • [38] Evaluating probabilistic graphical models for forecasting
    Ibarguengoytia, Pablo H.
    Reyes, Alberto
    Garcia, Uriel A.
    Romero, Ines
    Pech, David
    2015 18TH INTERNATIONAL CONFERENCE ON INTELLIGENT SYSTEM APPLICATION TO POWER SYSTEMS (ISAP), 2015,
  • [39] Recent Advances in Probabilistic Graphical Models
    Bielza, Concha
    Moral, Serafin
    Salmeron, Antonio
    INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS, 2015, 30 (03) : 207 - 208
  • [40] Value Symmetries in Probabilistic Graphical Models
    Madan, Gagan
    Anand, Ankit
    Mausam, Mausam
    Singla, Parag
    UNCERTAINTY IN ARTIFICIAL INTELLIGENCE, 2018, : 886 - 895