English

Recurrent Dirichlet Belief Networks for Interpretable Dynamic Relational Data Modelling

Machine Learning 2020-04-30 v2 Machine Learning

Abstract

The Dirichlet Belief Network~(DirBN) has been recently proposed as a promising approach in learning interpretable deep latent representations for objects. In this work, we leverage its interpretable modelling architecture and propose a deep dynamic probabilistic framework -- the Recurrent Dirichlet Belief Network~(Recurrent-DBN) -- to study interpretable hidden structures from dynamic relational data. The proposed Recurrent-DBN has the following merits: (1) it infers interpretable and organised hierarchical latent structures for objects within and across time steps; (2) it enables recurrent long-term temporal dependence modelling, which outperforms the one-order Markov descriptions in most of the dynamic probabilistic frameworks. In addition, we develop a new inference strategy, which first upward-and-backward propagates latent counts and then downward-and-forward samples variables, to enable efficient Gibbs sampling for the Recurrent-DBN. We apply the Recurrent-DBN to dynamic relational data problems. The extensive experiment results on real-world data validate the advantages of the Recurrent-DBN over the state-of-the-art models in interpretable latent structure discovery and improved link prediction performance.

Keywords

Cite

@article{arxiv.2002.10235,
  title  = {Recurrent Dirichlet Belief Networks for Interpretable Dynamic Relational Data Modelling},
  author = {Yaqiong Li and Xuhui Fan and Ling Chen and Bin Li and Zheng Yu and Scott A. Sisson},
  journal= {arXiv preprint arXiv:2002.10235},
  year   = {2020}
}

Comments

7 pages, 3 figures

R2 v1 2026-06-23T13:51:36.829Z