libri scuola books Fumetti ebook dvd top ten sconti 0 Carrello


Torna Indietro

damien paul (curatore); dellaportas petros (curatore); polson nicholas g. (curatore); stephens david a. (curatore) - bayesian theory and applications
Zoom

Bayesian Theory and Applications

; ; ;




Disponibilità: Normalmente disponibile in 20 giorni
A causa di problematiche nell'approvvigionamento legate alla Brexit sono possibili ritardi nelle consegne.


PREZZO
252,98 €
NICEPRICE
240,33 €
SCONTO
5%



Questo prodotto usufruisce delle SPEDIZIONI GRATIS
selezionando l'opzione Corriere Veloce in fase di ordine.


Pagabile anche con Carta della cultura giovani e del merito, 18App Bonus Cultura e Carta del Docente


Facebook Twitter Aggiungi commento


Spese Gratis

Dettagli

Genere:Libro
Lingua: Inglese
Pubblicazione: 01/2013





Note Editore

The development of hierarchical models and Markov chain Monte Carlo (MCMC) techniques forms one of the most profound advances in Bayesian analysis since the 1970s and provides the basis for advances in virtually all areas of applied and theoretical Bayesian statistics. This volume guides the reader along a statistical journey that begins with the basic structure of Bayesian theory, and then provides details on most of the past and present advances in this field. The book has a unique format. There is an explanatory chapter devoted to each conceptual advance followed by journal-style chapters that provide applications or further advances on the concept. Thus, the volume is both a textbook and a compendium of papers covering a vast range of topics. It is appropriate for a well-informed novice interested in understanding the basic approach, methods and recent applications. Because of its advanced chapters and recent work, it is also appropriate for a more mature reader interested in recent applications and developments, and who may be looking for ideas that could spawn new research. Hence, the audience for this unique book would likely include academicians/practitioners, and could likely be required reading for undergraduate and graduate students in statistics, medicine, engineering, scientific computation, business, psychology, bio-informatics, computational physics, graphical models, neural networks, geosciences, and public policy. The book honours the contributions of Sir Adrian F. M. Smith, one of the seminal Bayesian researchers, with his papers on hierarchical models, sequential Monte Carlo, and Markov chain Monte Carlo and his mentoring of numerous graduate students -the chapters are authored by prominent statisticians influenced by him. Bayesian Theory and Applications should serve the dual purpose of a reference book, and a textbook in Bayesian Statistics.




Sommario

1 - Observables and Models: exchangeability and the inductive argument
2 - Exchangeability and its Ramifications
3 - Hierarchical Modeling
4 - Bayesian Hierarchical Kernel Machines for Nonlinear Regression and Classification
5 - Flexible Bayesian modelling for clustered categorical responses in developmental toxicology
6 - Markov chain Monte Carlo Methods
7 - Advances in Markov chain Monte Carlo
8 - Bayesian Dynamic Modelling
9 - Hierarchical modeling in time series: the factor analytic approach
10 - Dynamic and spatial modeling of block maxima extremes
11 - Online Bayesian learning in dynamic models: An illustrative introduction to particle methods
12 - Semi-supervised Classification of Texts Using Particle Learning for Probabilistic Automata
13 - Bayesian Nonparametrics
14 - Geometric Weight Priors and their Applications
15 - Revisiting Bayesian Curve Fitting Using Multivariate Normal Mixtures
16 - Applications of Bayesian Smoothing Splines
17 - Bayesian Approaches to Copula Modelling
18 - Hypothesis Testing and Model Uncertainty
19 - Proper and non-informative conjugate priors for exponential family models
20 - Bayesian Model Specification: Heuristics and Examples
21 - Case studies in Bayesian screening for time-varying model structure: The partition problem
22 - Bayesian Regression Structure Discovery
23 - Gibbs sampling for ordinary, robust and logistic regression with Laplace priors
24 - Bayesian Model Averaging in the M-Open Framework
25 - Asset Allocation in Finance: A Bayesian Perspective
26 - Markov Chain Monte Carlo Methods in Corporate Finance
27 - Actuarial Credibity Theory and Bayesian Statistics - The Story of a Special Evolution
28 - Bayesian Models in Biostatistics and Medicine
29 - Subgroup Analysis
30 - Surviving Fully Bayesian Nonparametric Regression Models
31 - Inverse Problems
32 - Approximate marginalization over modeling errors and uncertainties in inverse problems
33 - Bayesian reconstruction of particle beam phase space




Autore

Paul Damien is a Professor at the McCombs School of Business, University of Texas in Austin. Petros Dellaportas is a Professor at the Athens University of Economics and Business. Nicholas G Polson is Professor of Econometrics and Statistics at Chicago Booth, University of Chicago. David M Stephens is a Professor in the Department of Mathematics and Statistics at McGill University, Canada.










Altre Informazioni

ISBN:

9780199695607

Condizione: Nuovo
Dimensioni: 240 x 46.7 x 162 mm Ø 1210 gr
Formato: Copertina rigida
Illustration Notes:121 b/w line drawings & 21 b/w halftones
Pagine Arabe: 720


Dicono di noi