A multi-level model allows the possibility of marginalization across levels in different ways, yielding more than one possible marginal likelihood. Since log-likelihoods are often used in classical model comparison, the question to ask is which likelihood should be chosen for a given model. The authors employ a Bayesian framework to shed some light on qualitative comparison of the likelihoods associated with a given model. They connect these results to related issues of the effective number of parameters, penalty function, and consistent definition of a likelihood-based model choice criterion. In particular, with a two-stage model they show that, very generally, regardless of hyperprior specification or how much data is collected or what th...
Many empirical settings involve the specification of models leading to complicated likelihood functi...
Hypothesis testing is a special form of model selection. Once a pair of competing models is fully de...
In Bayesian statistics, the marginal likelihood, also known as the evidence, is used to evaluate mod...
How do we compare between hypotheses that are entirely consistent with observations? The marginal li...
In a Bayesian analysis, different models can be compared on the basis of theexpected or marginal lik...
This article provides a framework for estimating the marginal likelihood for the purpose of Bayesian...
See the README.md for details about this code. Abstract (manuscript) Multilevel linear models allo...
marginal likelihood estimation In ML model selection we judge models by their ML score and the numbe...
This article provides a framework for estimating the marginal likelihood for the purpose of Bayesian...
This is an up-to-date introduction to, and overview of, marginal likelihood computation for model se...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
We compared Bayes factors to normalized maximum likelihood for the simple case of selecting between ...
Abstract: Many empirical settings involve the specification of models leading to complicated likelih...
The focus of this paper is to describe Bayesian estimation, including construction of prior distribu...
Many empirical settings involve the specification of models leading to complicated likelihood functi...
Many empirical settings involve the specification of models leading to complicated likelihood functi...
Hypothesis testing is a special form of model selection. Once a pair of competing models is fully de...
In Bayesian statistics, the marginal likelihood, also known as the evidence, is used to evaluate mod...
How do we compare between hypotheses that are entirely consistent with observations? The marginal li...
In a Bayesian analysis, different models can be compared on the basis of theexpected or marginal lik...
This article provides a framework for estimating the marginal likelihood for the purpose of Bayesian...
See the README.md for details about this code. Abstract (manuscript) Multilevel linear models allo...
marginal likelihood estimation In ML model selection we judge models by their ML score and the numbe...
This article provides a framework for estimating the marginal likelihood for the purpose of Bayesian...
This is an up-to-date introduction to, and overview of, marginal likelihood computation for model se...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
We compared Bayes factors to normalized maximum likelihood for the simple case of selecting between ...
Abstract: Many empirical settings involve the specification of models leading to complicated likelih...
The focus of this paper is to describe Bayesian estimation, including construction of prior distribu...
Many empirical settings involve the specification of models leading to complicated likelihood functi...
Many empirical settings involve the specification of models leading to complicated likelihood functi...
Hypothesis testing is a special form of model selection. Once a pair of competing models is fully de...
In Bayesian statistics, the marginal likelihood, also known as the evidence, is used to evaluate mod...