Essec\Faculty\Model\Contribution {#2216
#_index: "academ_contributions"
#_id: "13884"
#_source: array:26 [
"id" => "13884"
"slug" => "approximate-bayesian-inference"
"yearMonth" => "2022-05"
"year" => "2022"
"title" => "Approximate Bayesian Inference"
"description" => "ALQUIER, P. [Ed] (2022). <i>Approximate Bayesian Inference</i>. MDPI."
"authors" => array:1 [
0 => array:3 [
"name" => "ALQUIER Pierre"
"bid" => "B00809923"
"slug" => "alquier-pierre"
]
]
"ouvrage" => ""
"keywords" => array:11 [
0 => "Bayesian statistics"
1 => "machine learning"
2 => "variational approximations"
3 => "PAC-Bayes"
4 => "expectation-propagation"
5 => "Markov chain Monte Carlo"
6 => "Langevin Monte Carlo"
7 => "sequential Monte Carlo"
8 => "Laplace approximations"
9 => "approximate Bayesian computation"
10 => "Gibbs posterior"
]
"updatedAt" => "2024-10-31 13:51:19"
"publicationUrl" => "https://www.mdpi.com/books/book/5544"
"publicationInfo" => array:3 [
"pages" => null
"volume" => null
"number" => null
]
"type" => array:2 [
"fr" => "Direction d'ouvrage"
"en" => "Book editor"
]
"support_type" => array:2 [
"fr" => "Editeur"
"en" => "Publisher"
]
"countries" => array:2 [
"fr" => null
"en" => null
]
"abstract" => array:2 [
"fr" => """
This book is a reprint of the Special Issue Approximate Bayesian Inference that was published in the open access journal Entropy (ISSN 1099-4300) (available at: https://www.mdpi.com/journal/entropy/special_issues/approx_Bayes_inference).\n
The objective of this Special Issue is to provide the latest advances in approximate Monte Carlo methods and in approximations of the posterior: design of efficient algorithms, study of the statistical properties of these algorithms, and challenging applications.
"""
"en" => """
This book is a reprint of the Special Issue Approximate Bayesian Inference that was published in the open access journal Entropy (ISSN 1099-4300) (available at: https://www.mdpi.com/journal/entropy/special_issues/approx_Bayes_inference).\n
The objective of this Special Issue is to provide the latest advances in approximate Monte Carlo methods and in approximations of the posterior: design of efficient algorithms, study of the statistical properties of these algorithms, and challenging applications.
"""
]
"authors_fields" => array:2 [
"fr" => "Systèmes d'Information, Data Analytics et Opérations"
"en" => "Information Systems, Data Analytics and Operations"
]
"indexedAt" => "2024-11-21T09:21:53.000Z"
"docTitle" => "Approximate Bayesian Inference"
"docSurtitle" => "Book editor"
"authorNames" => "<a href="/cv/alquier-pierre">ALQUIER Pierre</a>"
"docDescription" => "<span class="document-property-authors">ALQUIER Pierre</span><br><span class="document-property-authors_fields">Information Systems, Data Analytics and Operations</span> | <span class="document-property-year">2022</span>"
"keywordList" => "<a href="#">Bayesian statistics</a>, <a href="#">machine learning</a>, <a href="#">variational approximations</a>, <a href="#">PAC-Bayes</a>, <a href="#">expectation-propagation</a>, <a href="#">Markov chain Monte Carlo</a>, <a href="#">Langevin Monte Carlo</a>, <a href="#">sequential Monte Carlo</a>, <a href="#">Laplace approximations</a>, <a href="#">approximate Bayesian computation</a>, <a href="#">Gibbs posterior</a>"
"docPreview" => "<b>Approximate Bayesian Inference</b><br><span>2022-05 | Book editor </span>"
"docType" => "research"
"publicationLink" => "<a href="https://www.mdpi.com/books/book/5544" target="_blank">Approximate Bayesian Inference</a>"
]
+lang: "en"
+"_type": "_doc"
+"_score": 8.020562
+"parent": null
}