Institute of Mathematical Statistics MonographsSeries Number 10 Dependence Models via Hierarchical Structures

Prijzen vanaf
63,40

Beschrijving

Bol Bringing together years of research into one useful resource, this text empowers the reader to creatively construct their own dependence models. Intended for senior undergraduate and postgraduate students, it takes a step-by-step look at the construction of specific dependence models, including exchangeable, Markov, moving average and, in general, spatio-temporal models. All constructions maintain a desired property of pre-specifying the marginal distribution and keeping it invariant. They do not separate the dependence from the marginals and the mechanisms followed to induce dependence are so general that they can be applied to a very large class of parametric distributions. All the constructions are based on appropriate definitions of three building blocks: prior distribution, likelihood function and posterior distribution, in a Bayesian analysis context. All results are illustrated with examples and graphical representations. Applications with data and code are interspersed throughout the book, covering fields including insurance and epidemiology.

Vergelijk aanbieders (2)

Shop
Prijs
Verzendkosten
Totale prijs
 63,40
Gratis
 63,40
Naar shop
Gratis Shipping Costs
 65,99
Gratis
 65,99
Naar shop
Gratis Shipping Costs
Beschrijving (2)
Bol

Bringing together years of research into one useful resource, this text empowers the reader to creatively construct their own dependence models. Intended for senior undergraduate and postgraduate students, it takes a step-by-step look at the construction of specific dependence models, including exchangeable, Markov, moving average and, in general, spatio-temporal models. All constructions maintain a desired property of pre-specifying the marginal distribution and keeping it invariant. They do not separate the dependence from the marginals and the mechanisms followed to induce dependence are so general that they can be applied to a very large class of parametric distributions. All the constructions are based on appropriate definitions of three building blocks: prior distribution, likelihood function and posterior distribution, in a Bayesian analysis context. All results are illustrated with examples and graphical representations. Applications with data and code are interspersed throughout the book, covering fields including insurance and epidemiology.

Amazon

Pages: 149, Hardcover, Cambridge University Press


Productspecificaties

Merk Cambridge University Press
EAN
  • 9781009584111

Prijshistorie

Prijzen voor het laatst bijgewerkt op: