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Nonparametric Bayes Modeling of Populations of Networks
by
Dunson, David B.
, Durante, Daniele
, Vogelstein, Joshua T.
in
Bayesian analysis
/ Bayesian nonparametrics
/ Bayesian theory
/ Brain
/ Brain network
/ Computer simulation
/ Data
/ Edge joints
/ Flexibility
/ Goodness of fit
/ Inference
/ Interconnections
/ Latent space
/ Matrix factorization
/ Morality
/ Network-valued random variable
/ Networks
/ neural networks
/ Nonparametric statistics
/ Population distribution
/ Probabilistic inference
/ Probabilistic models
/ Probability
/ Random variables
/ Regression analysis
/ Statistical analysis
/ Statistical methods
/ Statistical models
/ Statistics
/ Theory and Methods
/ topology
2017
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Nonparametric Bayes Modeling of Populations of Networks
by
Dunson, David B.
, Durante, Daniele
, Vogelstein, Joshua T.
in
Bayesian analysis
/ Bayesian nonparametrics
/ Bayesian theory
/ Brain
/ Brain network
/ Computer simulation
/ Data
/ Edge joints
/ Flexibility
/ Goodness of fit
/ Inference
/ Interconnections
/ Latent space
/ Matrix factorization
/ Morality
/ Network-valued random variable
/ Networks
/ neural networks
/ Nonparametric statistics
/ Population distribution
/ Probabilistic inference
/ Probabilistic models
/ Probability
/ Random variables
/ Regression analysis
/ Statistical analysis
/ Statistical methods
/ Statistical models
/ Statistics
/ Theory and Methods
/ topology
2017
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Nonparametric Bayes Modeling of Populations of Networks
by
Dunson, David B.
, Durante, Daniele
, Vogelstein, Joshua T.
in
Bayesian analysis
/ Bayesian nonparametrics
/ Bayesian theory
/ Brain
/ Brain network
/ Computer simulation
/ Data
/ Edge joints
/ Flexibility
/ Goodness of fit
/ Inference
/ Interconnections
/ Latent space
/ Matrix factorization
/ Morality
/ Network-valued random variable
/ Networks
/ neural networks
/ Nonparametric statistics
/ Population distribution
/ Probabilistic inference
/ Probabilistic models
/ Probability
/ Random variables
/ Regression analysis
/ Statistical analysis
/ Statistical methods
/ Statistical models
/ Statistics
/ Theory and Methods
/ topology
2017
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Journal Article
Nonparametric Bayes Modeling of Populations of Networks
2017
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Overview
Replicated network data are increasingly available in many research fields. For example, in connectomic applications, interconnections among brain regions are collected for each patient under study, motivating statistical models which can flexibly characterize the probabilistic generative mechanism underlying these network-valued data. Available models for a single network are not designed specifically for inference on the entire probability mass function of a network-valued random variable and therefore lack flexibility in characterizing the distribution of relevant topological structures. We propose a flexible Bayesian nonparametric approach for modeling the population distribution of network-valued data. The joint distribution of the edges is defined via a mixture model that reduces dimensionality and efficiently incorporates network information within each mixture component by leveraging latent space representations. The formulation leads to an efficient Gibbs sampler and provides simple and coherent strategies for inference and goodness-of-fit assessments. We provide theoretical results on the flexibility of our model and illustrate improved performance-compared to state-of-the-art models-in simulations and application to human brain networks. Supplementary materials for this article are available online.
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