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Book
The GLIM system: release 4 manual
Authors: ---
ISBN: 0198522312 9780198522317 Year: 1993 Publisher: Oxford: Clarendon,


Book
GLIM : an introduction
Author:
ISBN: 0198522258 0198522134 9780198522256 9780198522133 Year: 1988 Publisher: Oxford: Clarendon,

GLIM for ecologists
Author:
ISBN: 0632031565 9780632031566 Year: 1993 Publisher: Oxford Blackwell

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Linear mixed models : a practical guide using statistical software
Authors: --- --- ---
ISBN: 1584884800 9781584884804 Year: 2007 Publisher: Boca Raton: Chapman & Hall/CRC,

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This book provides a clear explanation of mixed modeling techniques, introducing their application through the analyses of real datasets and presenting each example using the most commonly used software packages - R, SAS, SPSS, HLM, and STATA. The authors describe common research designs and corresponding data structures for which mixed models analysis is an appropriate statistical tool, and they include detailed descriptions on how to set up datasets for these types of analyses. The treatment also includes real-world datasets that contain common problems, such as missing data, that must be addressed using mixed models. A supporting Web site provides software code and the datasets discussed in the book.


Book
Dynamic linear models with R
Authors: --- ---
ISBN: 0387772375 9786612292156 1282292153 0387772383 Year: 2009 Publisher: New York : Springer,

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State space models have gained tremendous popularity in recent years in as disparate fields as engineering, economics, genetics and ecology. After a detailed introduction to general state space models, this book focuses on dynamic linear models, emphasizing their Bayesian analysis. Whenever possible it is shown how to compute estimates and forecasts in closed form; for more complex models, simulation techniques are used. A final chapter covers modern sequential Monte Carlo algorithms. The book illustrates all the fundamental steps needed to use dynamic linear models in practice, using R. Many detailed examples based on real data sets are provided to show how to set up a specific model, estimate its parameters, and use it for forecasting. All the code used in the book is available online. No prior knowledge of Bayesian statistics or time series analysis is required, although familiarity with basic statistics and R is assumed. Giovanni Petris is Associate Professor at the University of Arkansas. He has published many articles on time series analysis, Bayesian methods, and Monte Carlo techniques, and has served on National Science Foundation review panels. He regularly teaches courses on time series analysis at various universities in the US and in Italy. An active participant on the R mailing lists, he has developed and maintains a couple of contributed packages. Sonia Petrone is Associate Professor of Statistics at Bocconi University,Milano. She has published research papers in top journals in the areas of Bayesian inference, Bayesian nonparametrics, and latent variables models. She is interested in Bayesian nonparametric methods for dynamic systems and state space models and is an active member of the International Society of Bayesian Analysis. Patrizia Campagnoli received her PhD in Mathematical Statistics from the University of Pavia in 2002. She was Assistant Professor at the University of Milano-Bicocca and currently works for a financial software company.


Book
A SAS/IML Companion for Linear Models
Author:
ISBN: 1441955569 1441955577 1441955720 1280391308 Year: 2010 Publisher: New York, NY : Springer New York : Imprint: Springer,

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Linear models courses are often presented as either theoretical or applied. Consequently, students may find themselves either proving theorems or using high-level procedures like PROC GLM to analyze data. There exists a gap between the derivation of formulas and analyses that hide these formulas behind attractive user interfaces. This book bridges that gap, demonstrating theory put into practice. Concepts presented in a theoretical linear models course are often trivialized in applied linear models courses by the facility of high-level SAS procedures like PROC MIXED and PROC REG that require the user to provide a few options and statements and in return produce vast amounts of output. This book uses PROC IML to show how analytic linear models formulas can be typed directly into PROC IML, as they were presented in the linear models course, and solved using data. This helps students see the link between theory and application. This also assists researchers in developing new methodologies in the area of linear models. The book contains complete examples of SAS code for many of the computations relevant to a linear models course. However, the SAS code in these examples automates the analytic formulas. The code for high-level procedures like PROC MIXED is also included for side-by-side comparison. The book computes basic descriptive statistics, matrix algebra, matrix decomposition, likelihood maximization, non-linear optimization, etc. in a format conducive to a linear models or a special topics course. Also included in the book is an example of a basic analysis of a linear mixed model using restricted maximum likelihood estimation (REML). The example demonstrates tests for fixed effects, estimates of linear functions, and contrasts. The example starts by showing the steps for analyzing the data using PROC IML and then provides the analysis using PROC MIXED. This allows students to follow the process that lead to the output.

Linear mixed models in practice : an SAS-oriented approach
Authors: ---
ISBN: 0387982221 9780387982229 0387950273 9780387950273 Year: 1997 Volume: 126 Publisher: New York: Springer,

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Keywords

Linear Models. --- Statistics as Topic. --- Models, Theoretical. --- 519.25 --- #ABIB:astp --- Linear models (Statistics) --- Longitudinal method --- Longitudinal research --- Longitudinal studies --- Methodology --- Research --- Social sciences --- Models, Linear (Statistics) --- Mathematical models --- Mathematical statistics --- Statistics --- 519.25 Statistical data handling --- Statistical data handling --- Area Analysis --- Correlation Studies --- Correlation Study --- Correlation of Data --- Data Analysis --- Estimation Technics --- Estimation Techniques --- Indirect Estimation Technics --- Indirect Estimation Techniques --- Multiple Classification Analysis --- Service Statistics --- Statistical Study --- Statistics, Service --- Tables and Charts as Topic --- Analyses, Area --- Analyses, Data --- Analyses, Multiple Classification --- Analysis, Data --- Analysis, Multiple Classification --- Area Analyses --- Classification Analyses, Multiple --- Classification Analysis, Multiple --- Data Analyses --- Data Correlation --- Data Correlations --- Estimation Technic, Indirect --- Estimation Technics, Indirect --- Estimation Technique --- Estimation Technique, Indirect --- Estimation Techniques, Indirect --- Indirect Estimation Technic --- Indirect Estimation Technique --- Multiple Classification Analyses --- Statistical Studies --- Studies, Correlation --- Studies, Statistical --- Study, Correlation --- Study, Statistical --- Technic, Indirect Estimation --- Technics, Estimation --- Technics, Indirect Estimation --- Technique, Estimation --- Technique, Indirect Estimation --- Techniques, Estimation --- Techniques, Indirect Estimation --- Linear Regression --- Log-Linear Models --- Models, Linear --- Linear Model --- Linear Regressions --- Log Linear Models --- Log-Linear Model --- Model, Linear --- Model, Log-Linear --- Models, Log-Linear --- Regression, Linear --- Regressions, Linear --- Programming --- Experimental Model --- Experimental Models --- Mathematical Model --- Model, Experimental --- Models (Theoretical) --- Models, Experimental --- Models, Theoretic --- Theoretical Study --- Mathematical Models --- Model (Theoretical) --- Model, Mathematical --- Model, Theoretical --- Models, Mathematical --- Studies, Theoretical --- Study, Theoretical --- Theoretical Model --- Theoretical Models --- Theoretical Studies --- Computer Simulation --- Systems Theory --- SAS (Computer file) --- Data processing --- Linear models (Statistics). --- Longitudinal method. --- Data processing. --- QA 279 Analysis of variance and covariance. Experimental design. / General works --- Linear Models --- Statistics as Topic --- Models, Theoretical --- Linear models (Statistics) - Data processing

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