1,104 research outputs found
Bayesian model selection for exponential random graph models via adjusted pseudolikelihoods
Models with intractable likelihood functions arise in areas including network
analysis and spatial statistics, especially those involving Gibbs random
fields. Posterior parameter es timation in these settings is termed a
doubly-intractable problem because both the likelihood function and the
posterior distribution are intractable. The comparison of Bayesian models is
often based on the statistical evidence, the integral of the un-normalised
posterior distribution over the model parameters which is rarely available in
closed form. For doubly-intractable models, estimating the evidence adds
another layer of difficulty. Consequently, the selection of the model that best
describes an observed network among a collection of exponential random graph
models for network analysis is a daunting task. Pseudolikelihoods offer a
tractable approximation to the likelihood but should be treated with caution
because they can lead to an unreasonable inference. This paper specifies a
method to adjust pseudolikelihoods in order to obtain a reasonable, yet
tractable, approximation to the likelihood. This allows implementation of
widely used computational methods for evidence estimation and pursuit of
Bayesian model selection of exponential random graph models for the analysis of
social networks. Empirical comparisons to existing methods show that our
procedure yields similar evidence estimates, but at a lower computational cost.Comment: Supplementary material attached. To view attachments, please download
and extract the gzzipped source file listed under "Other formats
Computationally efficient inference for latent position network models
Latent position models are widely used for the analysis of networks in a
variety of research fields. In fact, these models possess a number of desirable
theoretical properties, and are particularly easy to interpret. However,
statistical methodologies to fit these models generally incur a computational
cost which grows with the square of the number of nodes in the graph. This
makes the analysis of large social networks impractical. In this paper, we
propose a new method characterised by a linear computational complexity, which
can be used to fit latent position models on networks of several tens of
thousands nodes. Our approach relies on an approximation of the likelihood
function, where the amount of noise introduced by the approximation can be
arbitrarily reduced at the expense of computational efficiency. We establish
several theoretical results that show how the likelihood error propagates to
the invariant distribution of the Markov chain Monte Carlo sampler. In
particular, we demonstrate that one can achieve a substantial reduction in
computing time and still obtain a good estimate of the latent structure.
Finally, we propose applications of our method to simulated networks and to a
large coauthorships network, highlighting the usefulness of our approach.Comment: 39 pages, 10 figures, 1 tabl
Adaptive Incremental Mixture Markov chain Monte Carlo
We propose Adaptive Incremental Mixture Markov chain Monte Carlo (AIMM), a
novel approach to sample from challenging probability distributions defined on
a general state-space. While adaptive MCMC methods usually update a parametric
proposal kernel with a global rule, AIMM locally adapts a semiparametric
kernel. AIMM is based on an independent Metropolis-Hastings proposal
distribution which takes the form of a finite mixture of Gaussian
distributions. Central to this approach is the idea that the proposal
distribution adapts to the target by locally adding a mixture component when
the discrepancy between the proposal mixture and the target is deemed to be too
large. As a result, the number of components in the mixture proposal is not
fixed in advance. Theoretically, we prove that there exists a process that can
be made arbitrarily close to AIMM and that converges to the correct target
distribution. We also illustrate that it performs well in practice in a variety
of challenging situations, including high-dimensional and multimodal target
distributions
Progressive hearing loss in Fabry's disease: a case report
Fabry's disease is a chromosomal X-linked inherited disease, which causes a lack of the lysosomal alpha-galactosidase A enzyme leading to a cellular accumulation of glycosphingolipids. This accumulation leads to various clinical disorders, including inner ear lesions, with sensorineural hearing loss and dizziness. This article proposes to describe a clinical case of a patient suffering from Fabry's disease with inner ear associated problems and to review the literature focusing on this subjec
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