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 variational graph recurrent neural network


Variational Graph Recurrent Neural Networks

Neural Information Processing Systems

Representation learning over graph structured data has been mostly studied in static graph settings while efforts for modeling dynamic graphs are still scant. In this paper, we develop a novel hierarchical variational model that introduces additional latent random variables to jointly model the hidden states of a graph recurrent neural network (GRNN) to capture both topology and node attribute changes in dynamic graphs. We argue that the use of high-level latent random variables in this variational GRNN (VGRNN) can better capture potential variability observed in dynamic graphs as well as the uncertainty of node latent representation. With semi-implicit variational inference developed for this new VGRNN architecture (SI-VGRNN), we show that flexible non-Gaussian latent representations can further help dynamic graph analytic tasks. Our experiments with multiple real-world dynamic graph datasets demonstrate that SI-VGRNN and VGRNN consistently outperform the existing baseline and state-of-the-art methods by a significant margin in dynamic link prediction.


Reviews: Variational Graph Recurrent Neural Networks

Neural Information Processing Systems

This paper studies a Graph RNN model for dynamic graphs. Cardinalities of nodes and edges can be time-varying. Especially the proposed VGRNN is made for highly variable graph sequences. The hidden state h_t, which is tracked via RNN function, governs the prior of latent variables and the sampled latent variable controls the generation of time-varying adjacency matrices. Such hierarchical modeling allows the proposed VGNN to fit to highly time-variable graph sequences.


Reviews: Variational Graph Recurrent Neural Networks

Neural Information Processing Systems

The proposed method is a sound combination of existing methods (GRNN [20] (deterministic) and GVAE [13] (no smoothness in time)), providing impressive performance gain for dynamic/new link prediction. Interpretability is stated but NOT supported by any. The authors should correct the paper for the camera ready so that all statements are supported.

  variational graph recurrent neural network

Variational Graph Recurrent Neural Networks

Neural Information Processing Systems

Representation learning over graph structured data has been mostly studied in static graph settings while efforts for modeling dynamic graphs are still scant. In this paper, we develop a novel hierarchical variational model that introduces additional latent random variables to jointly model the hidden states of a graph recurrent neural network (GRNN) to capture both topology and node attribute changes in dynamic graphs. We argue that the use of high-level latent random variables in this variational GRNN (VGRNN) can better capture potential variability observed in dynamic graphs as well as the uncertainty of node latent representation. With semi-implicit variational inference developed for this new VGRNN architecture (SI-VGRNN), we show that flexible non-Gaussian latent representations can further help dynamic graph analytic tasks. Our experiments with multiple real-world dynamic graph datasets demonstrate that SI-VGRNN and VGRNN consistently outperform the existing baseline and state-of-the-art methods by a significant margin in dynamic link prediction.


Variational Graph Recurrent Neural Networks

Hajiramezanali, Ehsan, Hasanzadeh, Arman, Narayanan, Krishna, Duffield, Nick, Zhou, Mingyuan, Qian, Xiaoning

Neural Information Processing Systems

Representation learning over graph structured data has been mostly studied in static graph settings while efforts for modeling dynamic graphs are still scant. In this paper, we develop a novel hierarchical variational model that introduces additional latent random variables to jointly model the hidden states of a graph recurrent neural network (GRNN) to capture both topology and node attribute changes in dynamic graphs. We argue that the use of high-level latent random variables in this variational GRNN (VGRNN) can better capture potential variability observed in dynamic graphs as well as the uncertainty of node latent representation. With semi-implicit variational inference developed for this new VGRNN architecture (SI-VGRNN), we show that flexible non-Gaussian latent representations can further help dynamic graph analytic tasks. Our experiments with multiple real-world dynamic graph datasets demonstrate that SI-VGRNN and VGRNN consistently outperform the existing baseline and state-of-the-art methods by a significant margin in dynamic link prediction.