JOURNAL ARTICLE

Unsupervised Learning with Truncated Gaussian Graphical Models

Qinliang SuXuejun LiaoChunyuan LiZhe GanLawrence Carin

Year: 2017 Journal:   Proceedings of the AAAI Conference on Artificial Intelligence Vol: 31 (1)   Publisher: Association for the Advancement of Artificial Intelligence

Abstract

Gaussian graphical models (GGMs) are widely used for statistical modeling, because of ease of inference and the ubiquitous use of the normal distribution in practical approximations. However, they are also known for their limited modeling abilities, due to the Gaussian assumption. In this paper, we introduce a novel variant of GGMs, which relaxes the Gaussian restriction and yet admits efficient inference. Specifically, we impose a bipartite structure on the GGM and govern the hidden variables by truncated normal distributions. The nonlinearity of the model is revealed by its connection to rectified linear unit (ReLU) neural networks. Meanwhile, thanks to the bipartite structure and appealing properties of truncated normals, we are able to train the models efficiently using contrastive divergence. We consider three output constructs, accounting for real-valued, binary and count data. We further extend the model to deep constructions and show that deep models can be used for unsupervised pre-training of rectifier neural networks. Extensive experimental results are provided to validate the proposed models and demonstrate their superiority over competing models.

Keywords:
Graphical model Gaussian Inference Bipartite graph Artificial intelligence Computer science Artificial neural network Statistical inference Divergence (linguistics) Algorithm Pattern recognition (psychology) Mathematics Theoretical computer science Machine learning Statistics

Metrics

9
Cited By
0.97
FWCI (Field Weighted Citation Impact)
43
Refs
0.80
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Gaussian Processes and Bayesian Inference
Physical Sciences →  Computer Science →  Artificial Intelligence
Neural Networks and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
Machine Learning and Data Classification
Physical Sciences →  Computer Science →  Artificial Intelligence

Related Documents

JOURNAL ARTICLE

Learning Gaussian graphical models with latent confounders

Ke WangAlexander FranksSang‐Yun Oh

Journal:   Journal of Multivariate Analysis Year: 2023 Vol: 198 Pages: 105213-105213
BOOK-CHAPTER

Learning in Graphical Gaussian Models

Paolo Giudici

Year: 1996 Pages: 621-628
JOURNAL ARTICLE

Learning Dynamic Conditional Gaussian Graphical Models

Feihu HuangSongcan Chen

Journal:   IEEE Transactions on Knowledge and Data Engineering Year: 2017 Vol: 30 (4)Pages: 703-716
JOURNAL ARTICLE

Singular Gaussian graphical models: Structure learning

Khalil MasmoudiAfif Masmoudi

Journal:   Communications in Statistics - Simulation and Computation Year: 2017 Vol: 47 (10)Pages: 3106-3117
© 2026 ScienceGate Book Chapters — All rights reserved.