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Data Analysis in Forensic Science: A Bayesian Decision Perspective
13 September 2010

Data Analysis in Forensic Science: A Bayesian Decision Perspective


Data Analysis in Forensic Science: A Bayesian Decision Perspective


Wiley | 2010 | ISBN: 0470998350 | 388 pages | PDF | 12 MB



This is the first text to examine the use of statistical methods in forensic science and bayesian statistics in combination.
The book is split into two parts: Part One concentrates on the philosophies of statistical inference. Chapter One examines the differences between the frequentist, the likelihood and the Bayesian perspectives, before Chapter Two explores the Bayesian decision–theoretic perspective further, and looks at the benefits it carries.
The Handbook of Applied Bayesian Analysis
27 September 2012


The Handbook of Applied Bayesian Analysis

The Handbook of Applied Bayesian Analysis
English | 2010 | ISBN: 0199548900 | 896 pages | PDF | 10,2 MB
System and Bayesian Reliability: Essays in Honor of Professor Richard E. Barlow
4 October 2011

System and Bayesian Reliability: Essays in Honor of Professor Richard E. Barlow

System and Bayesian Reliability: Essays in Honor of Professor Richard E. Barlow

2002 | 409 | ISBN: 9810248652 | PDF | 15 Mb

This volume is a collection of articles on reliability systems and Bayesian reliability analysis. Written by reputable researchers, the articles are self-contained and are linked with literature reviews and new research ideas. The book is dedicated to Emeritus Professor Richard E. Barlow, who is well known for his pioneering research on reliability theory and Bayesian reliability analysis. ...
Coherent Stress Testing: A Bayesian Approach to the Analysis of Financial Risk
22 December 2010

Coherent Stress Testing: A Bayesian Approach to the Analysis of Financial Risk

Coherent Stress Testing: A Bayesian Approach to the Analysis of Financial Risk by Riccardo Rebonato

Wiley | 2010 | ISBN: 0470666013, 0470667362 | 238 pages | PDF | 12 MB

In Coherent Stress Testing: A Bayesian Approach, industry expert Riccardo Rebonato presents a groundbreaking new approach to this important but often undervalued part of the risk management toolkit. Based on the author's extensive work, research and presentations in the area, the book fills a gap in quantitative risk management by introducing a new and very intuitively appealing approach to stress testing based on expert judgement and Bayesian networks.
Coherent Stress Testing - A Bayesian Approach to the Analysis of Financial Risk
6 October 2010

Coherent Stress Testing - A Bayesian Approach to the Analysis of Financial Risk

Riccardo Rebonato, "Coherent Stress Testing: A Bayesian Approach to the Analysis of Financial Risk"
Wiley | 2010 | ISBN: 0470666013, 0470667362 | 238 pages | PDF | 1,3 MB
Multiscale Modeling: A Bayesian Perspective
30 September 2011

Multiscale Modeling: A Bayesian Perspective

Multiscale Modeling: A Bayesian Perspective

2007 | 264 | ISBN: 0387708979 | PDF | 3 Mb

This highly useful book contains methodology for the analysis of data that arise from multiscale processes. It brings together a number of recent developments and makes them accessible to a wider audience. Taking a Bayesian approach allows for full accounting of uncertainty, and also addresses the delicate issue of uncertainty at multiple scales. These methods can handle different amounts of prior knowledge at different scales, as often occurs in practice....
Bayesian Reliability (Springer Series in Statistics)
20 March 2011

Bayesian Reliability (Springer Series in Statistics)

Bayesian Reliability (Springer Series in Statistics)

2008 | 437 | ISBN: 0387779485 | PDF | 4 Mb

Bayesian Reliability presents modern methods and techniques for analyzing reliability data from a Bayesian perspective. The adoption and application of Bayesian methods in virtually all branches of science and engineering have significantly increased over the past few decades. This increase is largely due to advances in simulation-based computational tools for implementing Bayesian methods....
Bayesian Artificial Intelligence, 2nd Edition
12 April 2011

Bayesian Artificial Intelligence, 2nd Edition
Bayesian Artificial Intelligence, 2nd Edition
Publisher: C.R.C Press | 2011 | 491 Pages | ISBN: 1439815917 | PDF | 3 MB

Updated and expanded, Bayesian Artificial Intelligence, Second Edition provides a practical and accessible introduction to the main concepts, foundation, and applications of Bayesian networks. It focuses on both the causal discovery of networks and Bayesian inference procedures. Adopting a causal interpretation of Bayesian networks, the authors discuss the use of Bayesian networks for causal modeling. They also draw on their own applied research to illustrate various applications of the technology.
Bayesian Item Response Modeling: Theory and Applications
3 July 2010

Bayesian Item Response Modeling: Theory and Applications
Bayesian Item Response Modeling: Theory and Applications
Publisher: Springer | English | June 1, 2010 | ISBN: 1441907416 | PDF | 314 pages | 3.5Mb

This book presents a thorough treatment and unified coverage of Bayesian item response modeling with applications in a variety of disciplines, including education, medicine, psychology, and sociology. Breakthroughs in computing technology have made the Bayesian approach particularly useful for many response modeling problems. Free from computational constraints, realistic and state-of-the-art latent variable response models are considered for complex assessment and survey data to solve real-world problems.
Bayesian Artificial Intelligence
12 April 2011

Bayesian Artificial Intelligence

Bayesian Artificial Intelligence

2011 | 491 | ISBN: 1439815917 | PDF | 3 Mb

Updated and expanded, Bayesian Artificial Intelligence, Second Edition provides a practical and accessible introduction to the main concepts, foundation, and applications of Bayesian networks. It focuses on both the causal discovery of networks and Bayesian inference procedures. Adopting a causal interpretation of Bayesian networks, the authors discuss the use of Bayesian networks for causal modeling. They also draw on their own applied research to illustrate various applications of the technology.New to the Second Edition...
Quantitative Data Analysis: Doing Social Research to Test Ideas
19 November 2011

Quantitative Data Analysis: Doing Social Research to Test Ideas


Quantitative Data Analysis: Doing Social Research to Test Ideas by Donald J. Treiman


Jo..ey-Ba.. | 2009-01-09 | ISBN: 0470380039 | 480 pages | PDF | 144 MB



This book is an accessible introduction to quantitative data analysis, concentrating on the key issues facing those new to research, such as how to decide which statistical procedure is suitable, and how to interpret the subsequent results. Each chapter includes illustrative examples and a set of exercises that allows readers to test their understanding of the topic. The book, written for graduate students in the social sciences, public health, and education, offers a practical approach to making sociological sense out of a body of quantitative data. The book also will be useful to more experienced researchers who need a readily accessible handbook on quantitative methods.
Disease Mapping with WinBUGS and MLwiN (Statistics in Practice)
21 May 2011

Disease Mapping with WinBUGS and MLwiN (Statistics in Practice)

Disease Mapping with WinBUGS and MLwiN (Statistics in Practice)

2003 | 292 | ISBN: 0470856041 | DJVU | 4 Mb

Disease mapping involves the analysis of geo-referenced disease incidence data and has many applications, for example within resource allocation, cluster alarm analysis, and ecological studies. There is a real need amongst public health workers for simpler and more efficient tools for the analysis of geo-referenced disease incidence data. Bayesian and multilevel methods provide the required efficiency, and with the emergence of software packages – such as WinBUGS and MLwiN – are now easy to implement in practice.[list][*]Provides an introduction to Bayesian and multilevel modelling in disease mapping....
Applied Missing Data Analysis by Craig K. Enders PhD
21 May 2013

Applied Missing Data Analysis by Craig K. Enders PhD

Craig K. Enders PhD, "Applied Missing Data Analysis"
English | ISBN: 1606236393 | 2010 | PDF | 377 pages | 6 MB

Walking readers step by step through complex concepts, this book translates missing data techniques into something that applied researchers and graduate students can understand and utilize in their own research. Enders explains the rationale and procedural details for maximum likelihood estimation, Bayesian estimation, multiple imputation, and models for handling missing not at random (MNAR) data.
Data Analysis and Graphics Using R: An Example-Based Approach, 3rd Edition
25 July 2010

Data Analysis and Graphics Using R: An Example-Based Approach, 3rd Edition
Data Analysis and Graphics Using R: An Example-Based Approach, 3rd Edition
Publisher: Cambridge University Press | 2010 | PDF | 552 pages | ISBN: 0521762936 | 6Mb

Discover what you can do with R! Introducing the R system, covering standard regression methods, then tackling more advanced topics, this book guides users through the practical, powerful tools that the R system provides. The emphasis is on hands-on analysis, graphical display, and interpretation of data. The many worked examples, from real-world research, are accompanied by commentary on what is done and why. The companion website has code and datasets, allowing readers to reproduce all analyses, along with solutions to selected exercises and updates. Assuming basic statistical knowledge and some experience with data analysis (but not R), the book is ideal for research scientists, final-year undergraduate or graduate-level students of applied statistics, and practicing statisticians. It is both for learning and for reference. This third edition expands upon topics such as Bayesian inference for regression, errors in variables, generalized linear mixed models, and random forests.