Determining the number of latent factors in statistical multi-relational learning

被引:0
|
作者
Shi, Chengchun [1 ]
Lu, Wenbin [1 ]
Song, Rui [1 ]
机构
[1] Department of Statistics, North Carolina State University, Raleigh,NC,27695, United States
关键词
Knowledge graph - Maximum likelihood estimation - Learning systems - Sampling - Statistics - Factorization;
D O I
暂无
中图分类号
学科分类号
摘要
Statistical relational learning is primarily concerned with learning and inferring relationships between entities in large-scale knowledge graphs. Nickel et al. (2011) proposed a RESCAL tensor factorization model for statistical relational learning, which achieves better or at least comparable results on common benchmark data sets when compared to other state-of-the-art methods. Given a positive integer s, RESCAL computes an s-dimensional latent vector for each entity. The latent factors can be further used for solving relational learning tasks, such as collective classification, collective entity resolution and link-based clustering. The focus of this paper is to determine the number of latent factors in the RESCAL model. Due to the structure of the RESCAL model, its log-likelihood function is not concave. As a result, the corresponding maximum likelihood estimators (MLEs) may not be consistent. Nonetheless, we design a specific pseudometric, prove the consistency of the MLEs under this pseudometric and establish its rate of convergence. Based on these results, we propose a general class of information criteria and prove their model selection consistencies when the number of relations is either bounded or diverges at a proper rate of the number of entities. Simulations and real data examples show that our proposed information criteria have good finite sample properties. © 2019 Chengchun Shi, Wenbin Lu, Rui Song.
引用
收藏
相关论文
共 50 条
  • [21] An Efficient Approach of Multi-Relational Data Mining and Statistical Technique
    Padhy, Neelamadhab
    Panigrahi, Rasmita
    PROCEEDINGS OF THE 3RD INTERNATIONAL CONFERENCE ON FRONTIERS OF INTELLIGENT COMPUTING: THEORY AND APPLICATIONS (FICTA) 2014, VOL 1, 2015, 327 : 99 - 111
  • [22] ROBUST MULTI-RELATIONAL LEARNING WITH ABSOLUTE PROJECTION RESCAL
    Chachlakis, Dimitris G.
    Tsitsikas, Yorgos
    Papalexakis, Evangelos E.
    Markopoulos, Panos P.
    2019 7TH IEEE GLOBAL CONFERENCE ON SIGNAL AND INFORMATION PROCESSING (IEEE GLOBALSIP), 2019,
  • [23] Constrained Sequential Pattern Knowledge in Multi-relational Learning
    Ferreira, Carlos Abreu
    Gama, Joao
    Costa, Vitor Santos
    PROGRESS IN ARTIFICIAL INTELLIGENCE-BOOK, 2011, 7026 : 282 - +
  • [24] A Multi-relational Learning Framework to Support Biomedical Applications
    Basile, Teresa M. A.
    Esposito, Floriana
    Caponetti, Laura
    COMPUTATIONAL INTELLIGENCE METHODS FOR BIOINFORMATICS AND BIOSTATISTICS, 2011, 6685 : 188 - 202
  • [25] Learning from Skewed Class Multi-relational Databases
    Guo, Hongyu
    Viktor, Herna L.
    FUNDAMENTA INFORMATICAE, 2008, 89 (01) : 69 - 94
  • [26] Cross-Graph Learning of Multi-Relational Associations
    Liu, Hanxiao
    Yang, Yiming
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 48, 2016, 48
  • [27] Multi-relational Clustering Based on Relational Distance
    Luan, Luan
    Li, Yun
    Yin, Jiang
    Sheng, Yan
    2010 INTERNATIONAL COLLOQUIUM ON COMPUTING, COMMUNICATION, CONTROL, AND MANAGEMENT (CCCM2010), VOL IV, 2010, : 47 - 50
  • [28] Multi-relational graph contrastive learning with learnable graph augmentation
    Mo, Xian
    Pang, Jun
    Wan, Binyuan
    Tang, Rui
    Liu, Hao
    Jiang, Shuyu
    NEURAL NETWORKS, 2025, 181
  • [29] Tensor Graph Convolutional Networks for Multi-Relational and Robust Learning
    Ioannidis, Vassilis N.
    Marques, Antonio G.
    Giannakis, Georgios B.
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2020, 68 : 6535 - 6546
  • [30] A multi-relational decision tree learning algorithm - Implementation and experiments
    Atramentov, A
    Leiva, H
    Honavar, V
    INDUCTIVE LOGIC PROGRAMMING, PROCEEDINGS, 2003, 2835 : 38 - 56