Zur Seitenansicht

Titelaufnahme

Titel
Bayesian nonparametric statistics : École d'Été de Probabilités de Saint-Flour LI - 2023 / Ismaël Castillo
VerfasserCastillo, Ismaël
ErschienenCham, Switzerland : Springer, [2024], © 2024
Umfangxii, 214 Seiten Illustrationen
Serie
Lecture notes in mathematics ; 2358
SchlagwörterMachine learning / Maschinelles Lernen / Optimierung / Optimization / Probability & statistics / Statistical physics / Statistische Physik / Stochastics / Stochastik / Wahrscheinlichkeitsrechnung und Statistik / Nichtparametrische Statistik / Bayes-Verfahren
URLCover
ISBN9783031740343
Links
Nachweis
Archiv METS (OAI-PMH)
Download
Zusammenfassung
This up-to-date overview of Bayesian nonparametric statistics provides both an introduction to the field and coverage of recent research topics, including deep neural networks, high-dimensional models and multiple testing, Bernstein-von Mises theorems and variational Bayes approximations, many of which have previously only been accessible through research articles. Although Bayesian posterior distributions are widely applied in astrophysics, inverse problems, genomics, machine learning and elsewhere, their theory is still only partially understood, especially in complex settings such as nonparametric or semiparametric models. Here, the available theory on the frequentist analysis of posterior distributions is outlined in terms of convergence rates, limiting shape results and uncertainty quantification. Based on lecture notes for a course given at the St-Flour summer school in 2023, the book is aimed at researchers and graduate students in statistics and probability.