Computing Expected Motif Counts for Exchangeable Graph Generative Models

05/01/2023
by   Oliver Schulte, et al.
0

Estimating the expected value of a graph statistic is an important inference task for using and learning graph models. This note presents a scalable estimation procedure for expected motif counts, a widely used type of graph statistic. The procedure applies for generative mixture models of the type used in neural and Bayesian approaches to graph data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/05/2018

Towards quantitative methods to assess network generative models

Assessing generative models is not an easy task. Generative models shoul...
research
02/15/2023

From Graph Generation to Graph Classification

This note describes a new approach to classifying graphs that leverages ...
research
05/27/2018

Contextual Graph Markov Model: A Deep and Generative Approach to Graph Processing

We introduce the Contextual Graph Markov Model, an approach combining id...
research
10/14/2019

Bayesian generalized linear model for over and under dispersed counts

Bayesian models that can handle both over and under dispersed counts are...
research
11/03/2022

Statistical Inference for Scale Mixture Models via Mellin Transform Approach

This paper deals with statistical inference for the scale mixture models...
research
05/24/2023

Restricted Mean Survival Time Estimation Using Bayesian Nonparametric Dependent Mixture Models

Restricted mean survival time (RMST) is an intuitive summary statistic f...
research
08/08/2022

Incorporating testing volume into estimation of effective reproduction number dynamics

Branching process inspired models are widely used to estimate the effect...

Please sign up or login with your details

Forgot password? Click here to reset