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Bayesian data analysis Andrew Gelman, John B. Carlin, Hal S. Stern, David B. Dunson, Aki Vehtari, Donald B. Rubin.

By: Series: Chapman & Hall/CRC texts in statistical sciencePublication details: USA Taylor and Francis 2014Edition: Third editionDescription: xiv, 661 pages : illustrations ; 27 cmISBN:
  • 9781439840955 (hardback)
Subject(s): DDC classification:
  • 519.5/42 23
LOC classification:
  • QA279.5.G45 2014
Other classification:
  • MAT029000
Online resources: Summary: "Preface This book is intended to have three roles and to serve three associated audiences: an introductory text on Bayesian inference starting from first principles, a graduate text on effective current approaches to Bayesian modeling and computation in statistics and related fields, and a handbook of Bayesian methods in applied statistics for general users of and researchers in applied statistics. Although introductory in its early sections, the book is definitely not elementary in the sense of a first text in statistics. The mathematics used in our book is basic probability and statistics, elementary calculus, and linear algebra. A review of probability notation is given in Chapter 1 along with a more detailed list of topics assumed to have been studied. The practical orientation of the book means that the reader's previous experience in probability, statistics, and linear algebra should ideally have included strong computational components. To write an introductory text alone would leave many readers with only a taste of the conceptual elements but no guidance for venturing into genuine practical applications, beyond those where Bayesian methods agree essentially with standard non-Bayesian analyses. On the other hand, we feel it would be a mistake to present the advanced methods without first introducing the basic concepts from our data-analytic perspective. Furthermore, due to the nature of applied statistics, a text on current Bayesian methodology would be incomplete without a variety of worked examples drawn from real applications. To avoid cluttering the main narrative, there are bibliographic notes at the end of each chapter and references at the end of the book"--
Reviews from LibraryThing.com: List(s) this item appears in: IMIS-Statistical Modeling with Application to Biology | IMS-Bayesian and Modern Statistical Data Analysis
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Holdings
Item type Current library Call number URL Status Date due Barcode Item holds
E-Book E-Book Strathmore University (Main Library) Online Resource Link to resource Not for loan Kaloleni - 4510
BOOK BOOK General Collection Open Shelf QA279.5.G45 2014 Available 95194
BOOK BOOK General Collection Open Shelf QA279.5.G45 2014 Available 95193
BOOK BOOK General Collection Open Shelf QA279.5.G45 2014 Available 95192
BOOK BOOK General Collection Open Shelf QA279.5.G45 2014 Available 95191
BOOK BOOK Strathmore University (Main Library) Open Shelf QA279.5.G45 2014 Available 95190
Total holds: 0

Includes bibliographical references (pages 607-639) and indexes.

"Preface This book is intended to have three roles and to serve three associated audiences: an introductory text on Bayesian inference starting from first principles, a graduate text on effective current approaches to Bayesian modeling and computation in statistics and related fields, and a handbook of Bayesian methods in applied statistics for general users of and researchers in applied statistics. Although introductory in its early sections, the book is definitely not elementary in the sense of a first text in statistics. The mathematics used in our book is basic probability and statistics, elementary calculus, and linear algebra. A review of probability notation is given in Chapter 1 along with a more detailed list of topics assumed to have been studied. The practical orientation of the book means that the reader's previous experience in probability, statistics, and linear algebra should ideally have included strong computational components. To write an introductory text alone would leave many readers with only a taste of the conceptual elements but no guidance for venturing into genuine practical applications, beyond those where Bayesian methods agree essentially with standard non-Bayesian analyses. On the other hand, we feel it would be a mistake to present the advanced methods without first introducing the basic concepts from our data-analytic perspective. Furthermore, due to the nature of applied statistics, a text on current Bayesian methodology would be incomplete without a variety of worked examples drawn from real applications. To avoid cluttering the main narrative, there are bibliographic notes at the end of each chapter and references at the end of the book"--

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