A Latent Shrinkage Position Model for Binary and Count Network Data

11/23/2022
by   Xian Yao Gwee, et al.
0

Interactions between actors are frequently represented using a network. The latent position model is widely used for analysing network data, whereby each actor is positioned in a latent space. Inferring the dimension of this space is challenging. Often, for simplicity, two dimensions are used or model selection criteria are employed to select the dimension, but this requires choosing a criterion and the computational expense of fitting multiple models. Here the latent shrinkage position model (LSPM) is proposed which intrinsically infers the effective dimension of the latent space. The LSPM employs a Bayesian nonparametric multiplicative truncated gamma process prior that ensures shrinkage of the variance of the latent positions across higher dimensions. Dimensions with non-negligible variance are deemed most useful to describe the observed network, inducing automatic inference on the latent space dimension. While the LSPM is applicable to many network types, logistic and Poisson LSPMs are developed here for binary and count networks respectively. Inference proceeds via a Markov chain Monte Carlo algorithm, where novel surrogate proposal distributions reduce the computational burden. The LSPM's properties are assessed through simulation studies, and its utility is illustrated through application to real network datasets. Open source software assists wider implementation of the LSPM.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/28/2021

Variational Inference for Latent Space Models for Dynamic Networks

Latent space models are popular for analyzing dynamic network data. We p...
research
05/17/2020

Latent Space Models for Dynamic Networks with Weighted Edges

Longitudinal binary relational data can be better understood by implemen...
research
09/20/2023

A Spike-and-Slab Prior for Dimension Selection in Generalized Linear Network Eigenmodels

Latent space models (LSMs) are frequently used to model network data by ...
research
06/30/2011

Effective Dimensions of Hierarchical Latent Class Models

Hierarchical latent class (HLC) models are tree-structured Bayesian netw...
research
05/26/2012

On latent position inference from doubly stochastic messaging activities

We model messaging activities as a hierarchical doubly stochastic point ...
research
02/12/2019

Bayesian cumulative shrinkage for infinite factorizations

There are a variety of Bayesian models relying on representations in whi...
research
07/16/2018

Modeling the social media relationships of Irish politicians using a generalized latent space stochastic blockmodel

Dáil Éireann is the principal chamber of the Irish parliament. The 31st ...

Please sign up or login with your details

Forgot password? Click here to reset