Handbook of approximate Bayesian computation
著者
書誌事項
Handbook of approximate Bayesian computation
(Handbooks of modern statistical methods / Series editors, Garrett Fitzmaurice)
CRC Press, Taylor & Francis Group, c2019
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注記
"A Chapman & Hall book"
Includes bibliographical references and index
内容説明・目次
内容説明
As the world becomes increasingly complex, so do the statistical models required to analyse the challenging problems ahead. For the very first time in a single volume, the Handbook of Approximate Bayesian Computation (ABC) presents an extensive overview of the theory, practice and application of ABC methods. These simple, but powerful statistical techniques, take Bayesian statistics beyond the need to specify overly simplified models, to the setting where the model is defined only as a process that generates data. This process can be arbitrarily complex, to the point where standard Bayesian techniques based on working with tractable likelihood functions would not be viable. ABC methods finesse the problem of model complexity within the Bayesian framework by exploiting modern computational power, thereby permitting approximate Bayesian analyses of models that would otherwise be impossible to implement.
The Handbook of ABC provides illuminating insight into the world of Bayesian modelling for intractable models for both experts and newcomers alike. It is an essential reference book for anyone interested in learning about and implementing ABC techniques to analyse complex models in the modern world.
目次
Introduction
Overview of approximate Bayesian computation: S. A. Sisson, Y. Fan and M. A. Beaumont
On the history of ABC: S.Tavar e
Regression approaches: M. G. B. Blum
Monte Carlo samplers for ABC: Y. Fan and S. A. Sisson
Summary statistics: D. Prangle
Likelihood-free model choose: J.-M. Marin, P. Pudlo, A. Estoup and C. Robert
ABC and indirect inference: C. C. Drovandi
High-dimensional ABC: D. Nott, V. Ong, Y. Fan and S. A. Sisson Theoretical and methodological aspects of MCMC computations with noisy likelihoods: C. Andrieu, A.Lee and M. Viola
Informed Choices: How to calibrate ABC with hypothesis testing: O. Ratmann, A. Camacho, S. Hu and C. Coljin
Approximating the likelihood in approximate Bayesian computation: C. C. Drovandi, C. Grazian, K. Mengersen and C. Robert
Software: D.Wegmann
Divide and conquer in ABC: Expectation-Propagation algorithms for likelihood-free inference: S. Barthelm e, N. Chopin and V. Cottet
SMC-ABC methods for estimation of stochastic simulation models of the limit order book: G.W. Peters, E. Panayi and F. Septier
Inferences on the acquisition of multidrug resistance in Mycobacterium tuberculosis using molecular epidemiological data: G. S. Rodrigues, S. A. Sisson, M. M. Tanaka
ABC in Systems Biology: J. Liepe and M. P. H. Stumpf
Application of approximate Bayesian computation to make inference about the genetic history of Pygmy hunter-gatherers populations from Western Central Africa: A. Estoup et al
ABC for climate: dealing with expensive simulators: P. B. Holden, N. R. Edwards, J. Hensman and R. D. Wilkinson
ABC in ecological modelling: M. Fasiolo and S. N. Wood
ABC in Nuclear Imaging: Y. Fan, S. R. Meikle, G. Angelis and A. Sitek
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