Smoothing Graphons for Modelling Exchangeable Relational Data

02/25/2020
by   Xuhui Fan, et al.
0

Modelling exchangeable relational data can be described by graphon theory. Most Bayesian methods for modelling exchangeable relational data can be attributed to this framework by exploiting different forms of graphons. However, the graphons adopted by existing Bayesian methods are either piecewise-constant functions, which are insufficiently flexible for accurate modelling of the relational data, or are complicated continuous functions, which incur heavy computational costs for inference. In this work, we introduce a smoothing procedure to piecewise-constant graphons to form smoothing graphons, which permit continuous intensity values for describing relations, but without impractically increasing computational costs. In particular, we focus on the Bayesian Stochastic Block Model (SBM) and demonstrate how to adapt the piecewise-constant SBM graphon to the smoothed version. We initially propose the Integrated Smoothing Graphon (ISG) which introduces one smoothing parameter to the SBM graphon to generate continuous relational intensity values. We then develop the Latent Feature Smoothing Graphon (LFSG), which improves on the ISG by introducing auxiliary hidden labels to decompose the calculation of the ISG intensity and enable efficient inference. Experimental results on real-world data sets validate the advantages of applying smoothing strategies to the Stochastic Block Model, demonstrating that smoothing graphons can greatly improve AUC and precision for link prediction without increasing computational complexity.

READ FULL TEXT

page 1

page 2

page 5

page 10

research
09/10/2019

Approximation of curves with piecewise constant or piecewise linear functions

In this paper we compute the Hausdorff distance between sets of continuo...
research
01/22/2018

Edge-Preserving Piecewise Linear Image Smoothing Using Piecewise Constant Filters

Most image smoothing filters in the literature assume a piecewise consta...
research
05/12/2023

Nonparametric Bayesian inference for stochastic processes with piecewise constant priors

We present a survey of some of our recent results on Bayesian nonparamet...
research
02/04/2019

Bayesian views of generalized additive modelling

Links between frequentist and Bayesian approaches to smoothing were high...
research
08/27/2016

Bayesian selection for the l2-Potts model regularization parameter: 1D piecewise constant signal denoising

Piecewise constant denoising can be solved either by deterministic optim...
research
02/24/2020

Recurrent Dirichlet Belief Networks for Interpretable Dynamic Relational Data Modelling

The Dirichlet Belief Network (DirBN) has been recently proposed as a pro...
research
06/07/2020

Analogy as Nonparametric Bayesian Inference over Relational Systems

Much of human learning and inference can be framed within the computatio...

Please sign up or login with your details

Forgot password? Click here to reset