Introduction to Bayesian Scientific Computing : Ten Lectures on Subjective Computing

A combination of the concepts subjective or Bayesian statistics and scientific computing, the book provides an integrated view across numerical linear algebra and computational statistics. Inverse problems act as the bridge between these two fields where the goal is to estimate an unknown parameter...

Description complète

Enregistré dans:
Détails bibliographiques
Auteurs principaux : Calvetti Daniela (Auteur), Somersalo Erkki (Auteur)
Format : Livre
Langue : anglais
Titre complet : Introduction to Bayesian Scientific Computing : Ten Lectures on Subjective Computing / Daniela Calvetti, Erkki Somersalo.
Publié : New York, NY : Springer New York , 2007
Cham : Springer Nature
Collection : Sureys and tutorials in the applied mathematical sciences (Internet) ; 2
Accès en ligne : Accès Nantes Université
Accès direct soit depuis les campus via le réseau ou le wifi eduroam soit à distance avec un compte @etu.univ-nantes.fr ou @univ-nantes.fr
Note sur l'URL : Accès sur la plateforme de l'éditeur
Accès sur la plateforme Istex
Condition d'utilisation et de reproduction : Conditions particulières de réutilisation pour les bénéficiaires des licences nationales : chttps://www.licencesnationales.fr/springer-nature-ebooks-contrat-licence-ln-2017
Sujets :
Documents associés : Autre format: Introduction to Bayesian scientific computing
Autre format: Analysis
LEADER 05320clm a2200685 4500
001 PPN123722772
003 http://www.sudoc.fr/123722772
005 20241001154700.0
010 |a 978-0-387-73394-4 
017 7 0 |a 10.1007/978-0-387-73394-4  |2 DOI 
035 |a (OCoLC)690452504 
035 |a Springer978-0-387-73394-4 
035 |a SPRINGER_EBOOKS_LN_PLURI_10.1007/978-0-387-73394-4 
035 |a Springer-11649-978-0-387-73394-4 
100 |a 20080505d2007 u u0frey0103 ba 
101 0 |a eng  |2 639-2 
102 |a US 
105 |a a a 001yy 
135 |a dr||||||||||| 
181 |6 z01  |c txt  |2 rdacontent 
181 1 |6 z01  |a i#  |b xxxe## 
182 |6 z01  |c c  |2 rdamedia 
182 1 |6 z01  |a b 
183 |6 z01  |a ceb  |2 RDAfrCarrier 
200 1 |a Introduction to Bayesian Scientific Computing  |e Ten Lectures on Subjective Computing  |f Daniela Calvetti, Erkki Somersalo. 
214 0 |a New York, NY  |c Springer New York 
214 2 |a Cham  |c Springer Nature  |d 2007 
225 0 |a Surveys and Tutorials in the Applied Mathematical Sciences  |x 2199-4773  |v 2 
330 |a A combination of the concepts subjective or Bayesian statistics and scientific computing, the book provides an integrated view across numerical linear algebra and computational statistics. Inverse problems act as the bridge between these two fields where the goal is to estimate an unknown parameter that is not directly observable by using measured data and a mathematical model linking the observed and the unknown. Inverse problems are closely related to statistical inference problems, where the observations are used to infer on an underlying probability distribution. This connection between statistical inference and inverse problems is a central topic of the book. Inverse problems are typically ill-posed: small uncertainties in data may propagate in huge uncertainties in the estimates of the unknowns. To cope with such problems, efficient regularization techniques are developed in the framework of numerical analysis. The counterpart of regularization in the framework of statistical inference is the use prior information. This observation opens the door to a fruitful interplay between statistics and numerical analysis: the statistical framework provides a rich source of methods that can be used to improve the quality of solutions in numerical analysis, and vice versa, the efficient numerical methods bring computational efficiency to the statistical inference problems. This book is intended as an easily accessible reader for those who need numerical and statistical methods in applied sciences. . 
359 1 |a Inverse problems and subjective computing -- Basic problem of statistical inference -- The praise of ignorance: randomness as lack of information -- Basic problem in numerical linear algebra -- Sampling: first encounter -- Statistically inspired preconditioners -- Conditional Gaussian densities and predictive envelopes -- More applications of the Gaussian conditioning -- Sampling: the real thing -- Wrapping up: hypermodels, dynamic priorconditioners and Bayesian learning. 
371 0 |a Accès en ligne pour les établissements français bénéficiaires des licences nationales 
371 0 |a Accès soumis à abonnement pour tout autre établissement 
371 1 |a Conditions particulières de réutilisation pour les bénéficiaires des licences nationales  |c chttps://www.licencesnationales.fr/springer-nature-ebooks-contrat-licence-ln-2017 
410 | |0 180354213  |t Sureys and tutorials in the applied mathematical sciences (Internet)  |x 2199-4773  |v 2 
452 | |0 151500096  |t Introduction to Bayesian scientific computing  |o ten lectures on subjective computing  |f Daniela Cavetti, Erkki Somersalo  |c New York  |n Springer Science  |d 2007  |p 1 vol. (XIV-202 p.)  |s Surveys and tutorials in the applied mathematical sciences  |y 978-0-387-73393-7 
452 | |0 177445831  |t Analysis  |h 1  |f Konrad Königsberger  |d 1990  |c Berlin  |n Springer  |p 1 vol. (XI, 360 p.)  |y 3-540-52006-6 
606 |3 PPN027296539  |a Statistique mathématique  |2 rameau 
606 |3 PPN027393496  |a Problèmes inverses (équations différentielles)  |2 rameau 
606 |3 PPN029753090  |a Statistique bayésienne  |2 rameau 
610 1 |a Theory of Computation 
610 2 |a Computational Science and Engineering 
610 2 |a Statistics and Computing 
610 2 |a Computational Mathematics and Numerical Analysis 
610 2 |a Probability Theory 
676 |a 40,151  |v 23 
680 |a QA75.5-76.95 
686 |a 65C60  |c 2010  |2 msc 
686 |a 62F15  |c 2010  |2 msc 
700 1 |3 PPN150507445  |a Calvetti  |b Daniela  |4 070 
701 1 |3 PPN084117168  |a Somersalo  |b Erkki  |f 19..-....  |4 070 
801 3 |a FR  |b Abes  |c 20240814  |g AFNOR 
801 1 |a DE  |b Springer  |c 20240603  |g AACR2 
856 4 |q PDF  |u https://doi.org/10.1007/978-0-387-73394-4  |z Accès sur la plateforme de l'éditeur 
856 4 |u https://revue-sommaire.istex.fr/ark:/67375/8Q1-7B0FJQXF-H  |z Accès sur la plateforme Istex 
856 4 |5 441099901:830844686  |u https://budistant.univ-nantes.fr/login?url=https://doi.org/10.1007/978-0-387-73394-4 
915 |5 441099901:830844686  |b SPRING18-00092 
930 |5 441099901:830844686  |b 441099901  |j g 
991 |5 441099901:830844686  |a Exemplaire créé en masse par ITEM le 30-09-2024 15:59 
997 |a NUM  |b SPRING18-00092  |d NUMpivo  |e EM  |s d 
998 |a 977791