

Author: Hummel Ruth M.
Publisher: Taylor & Francis Ltd
ISSN: 1061-8600
Source: Journal of Computational and Graphical Statistics, Vol.21, Iss.4, 2012-10, pp. : 920-939
Disclaimer: Any content in publications that violate the sovereignty, the constitution or regulations of the PRC is not accepted or approved by CNPIEC.
Abstract
Markov chain Monte Carlo methods can be used to approximate the intractable normalizing constants that arise in likelihood calculations for many exponential-family random graph models for networks. However, in practice, the resulting approximations degrade as parameter values move away from the value used to define the Markov chain, even in cases where the chain produces perfectly efficient samples. We introduce a new approximation method along with a novel method of moving toward a maximum likelihood estimator (MLE) from an arbitrary starting parameter value in a series of steps based on alternating between the canonical exponential-family parameterization and the mean-value parameterization. This technique enables us to find an approximate MLE in many cases where this was previously not possible. We illustrate these methods on a model for a transcriptional regulation network for
Related content




Stochastic Environmental Research and Risk Assessment, Vol. 28, Iss. 3, 2014-03 ,pp. :


A Data Forward Stepwise Fitting Algorithm Based on Orthogonal Function System
ITM Web of conferences, Vol. 12, Iss. issue, 2017-09 ,pp. :

