LGMLFeb 24, 2020

Recurrent Dirichlet Belief Networks for Interpretable Dynamic Relational Data Modelling

arXiv:2002.10235v215 citations
AI Analysis

This provides a probabilistic framework for interpretable dynamic relational data modeling, which is incremental over existing Dirichlet Belief Networks.

The authors tackled the problem of learning interpretable hierarchical latent structures from dynamic relational data by proposing Recurrent Dirichlet Belief Networks, which achieved improved link prediction performance over state-of-the-art models in experiments on real-world data.

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.

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