New Estimation Methods for Log-Linear Models

New Estimation Methods for Log-Linear Models
Title New Estimation Methods for Log-Linear Models PDF eBook
Author Thomas C. Redman
Publisher
Pages 39
Release 1981
Genre
ISBN

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Two new methods for estimation of parameters in log-linear models are proposed and their properties considered in this article. Conditions for the existence of the new estimators are derived, and the new estimators are shown to possess appropriate asymptotic properties.

Log-Linear Models and Logistic Regression

Log-Linear Models and Logistic Regression
Title Log-Linear Models and Logistic Regression PDF eBook
Author Ronald Christensen
Publisher Springer Science & Business Media
Pages 498
Release 2006-04-06
Genre Mathematics
ISBN 0387226249

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The primary focus here is on log-linear models for contingency tables, but in this second edition, greater emphasis has been placed on logistic regression. The book explores topics such as logistic discrimination and generalised linear models, and builds upon the relationships between these basic models for continuous data and the analogous log-linear and logistic regression models for discrete data. It also carefully examines the differences in model interpretations and evaluations that occur due to the discrete nature of the data. Sample commands are given for analyses in SAS, BMFP, and GLIM, while numerous data sets from fields as diverse as engineering, education, sociology, and medicine are used to illustrate procedures and provide exercises. Throughoutthe book, the treatment is designed for students with prior knowledge of analysis of variance and regression.

Linear and Log-linear Models for Count Time Series Analysis

Linear and Log-linear Models for Count Time Series Analysis
Title Linear and Log-linear Models for Count Time Series Analysis PDF eBook
Author Nicholas Michael Bosowski
Publisher
Pages 151
Release 2016
Genre Distribution (Probability theory)
ISBN

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Modeling count data is a topic of interest in many applications. Traditional time series assume continuous data with a normal distribution, which is not appropriate for count data. In this thesis we focus on linear and log-linear count models with Poisson and NB2 distributions with or without zero-inflation. These models provide a parsimonious manner to account for serial correlation in count data through the conditional mean and distribution. Current research on these models provides theoretical results for model analysis, estimation, and use. This thesis provides a unified framework of these models based on current literature . We also provide several new results. First, we develop a simple heuristic evaluation of the Poisson model. This approximate marginal distribution helps visualize the range of values the Poisson model achieves. It can also be used as a horizon forecast when the present has little influence on the forecast. We exploit similarities between these and ARMA models to find bounds on stationarity of the NB2 linear model, ensuring that estimation techniques are bounded. We also extend estimation methods for these models via conditional maximum likelihood estimation. This estimation method has been studied for the Poisson models by [1, 2]. We use this technique to develop estimators of the NB2 models as well as zero-inflated Poisson and NB2 models. We evaluate the estimators for consistency and asymptotic performance and find they perform well. We compare the estimator for the NB2 model to the technique of quasi maximum likelihood estimation [3] and find they perform comparably. In addition, we develop approximations for the limiting information matrix for two cases of the Poisson linear model. We evaluate performance of these approximations and use them to develop a better understanding of how true parameter values affect estimation. Finally, we study the use of linear and log-linear models for forecasting. We focus predominantly on probabilistic forecasts discussing theoretical framework as well as practical use. We then apply these methods to a real world data set to demonstrate how the models handle the real world data.

Generalized Linear Models

Generalized Linear Models
Title Generalized Linear Models PDF eBook
Author P. McCullagh
Publisher Routledge
Pages 361
Release 2019-01-22
Genre Mathematics
ISBN 1351445847

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The success of the first edition of Generalized Linear Models led to the updated Second Edition, which continues to provide a definitive unified, treatment of methods for the analysis of diverse types of data. Today, it remains popular for its clarity, richness of content and direct relevance to agricultural, biological, health, engineering, and ot

An Introduction to Generalized Linear Models

An Introduction to Generalized Linear Models
Title An Introduction to Generalized Linear Models PDF eBook
Author Annette J. Dobson
Publisher CRC Press
Pages 316
Release 2008-05-12
Genre Mathematics
ISBN 1584889519

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Continuing to emphasize numerical and graphical methods, An Introduction to Generalized Linear Models, Third Edition provides a cohesive framework for statistical modeling. This new edition of a bestseller has been updated with Stata, R, and WinBUGS code as well as three new chapters on Bayesian analysis. Like its predecessor, this edition presents the theoretical background of generalized linear models (GLMs) before focusing on methods for analyzing particular kinds of data. It covers normal, Poisson, and binomial distributions; linear regression models; classical estimation and model fitting methods; and frequentist methods of statistical inference. After forming this foundation, the authors explore multiple linear regression, analysis of variance (ANOVA), logistic regression, log-linear models, survival analysis, multilevel modeling, Bayesian models, and Markov chain Monte Carlo (MCMC) methods. Using popular statistical software programs, this concise and accessible text illustrates practical approaches to estimation, model fitting, and model comparisons. It includes examples and exercises with complete data sets for nearly all the models covered.

Log-Linear Modeling

Log-Linear Modeling
Title Log-Linear Modeling PDF eBook
Author Alexander von Eye
Publisher John Wiley & Sons
Pages 372
Release 2014-08-21
Genre Mathematics
ISBN 1118391764

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An easily accessible introduction to log-linear modeling for non-statisticians Highlighting advances that have lent to the topic's distinct, coherent methodology over the past decade, Log-Linear Modeling: Concepts, Interpretation, and Application provides an essential, introductory treatment of the subject, featuring many new and advanced log-linear methods, models, and applications. The book begins with basic coverage of categorical data, and goes on to describe the basics of hierarchical log-linear models as well as decomposing effects in cross-classifications and goodness-of-fit tests. Additional topics include: The generalized linear model (GLM) along with popular methods of coding such as effect coding and dummy coding Parameter interpretation and how to ensure that the parameters reflect the hypotheses being studied Symmetry, rater agreement, homogeneity of association, logistic regression, and reduced designs models Throughout the book, real-world data illustrate the application of models and understanding of the related results. In addition, each chapter utilizes R, SYSTAT®, and §¤EM software, providing readers with an understanding of these programs in the context of hierarchical log-linear modeling. Log-Linear Modeling is an excellent book for courses on categorical data analysis at the upper-undergraduate and graduate levels. It also serves as an excellent reference for applied researchers in virtually any area of study, from medicine and statistics to the social sciences, who analyze empirical data in their everyday work.

An Introduction to Generalized Linear Models

An Introduction to Generalized Linear Models
Title An Introduction to Generalized Linear Models PDF eBook
Author Annette J. Dobson
Publisher CRC Press
Pages 354
Release 2018-04-17
Genre Mathematics
ISBN 1351726218

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An Introduction to Generalized Linear Models, Fourth Edition provides a cohesive framework for statistical modelling, with an emphasis on numerical and graphical methods. This new edition of a bestseller has been updated with new sections on non-linear associations, strategies for model selection, and a Postface on good statistical practice. Like its predecessor, this edition presents the theoretical background of generalized linear models (GLMs) before focusing on methods for analyzing particular kinds of data. It covers Normal, Poisson, and Binomial distributions; linear regression models; classical estimation and model fitting methods; and frequentist methods of statistical inference. After forming this foundation, the authors explore multiple linear regression, analysis of variance (ANOVA), logistic regression, log-linear models, survival analysis, multilevel modeling, Bayesian models, and Markov chain Monte Carlo (MCMC) methods. Introduces GLMs in a way that enables readers to understand the unifying structure that underpins them Discusses common concepts and principles of advanced GLMs, including nominal and ordinal regression, survival analysis, non-linear associations and longitudinal analysis Connects Bayesian analysis and MCMC methods to fit GLMs Contains numerous examples from business, medicine, engineering, and the social sciences Provides the example code for R, Stata, and WinBUGS to encourage implementation of the methods Offers the data sets and solutions to the exercises online Describes the components of good statistical practice to improve scientific validity and reproducibility of results. Using popular statistical software programs, this concise and accessible text illustrates practical approaches to estimation, model fitting, and model comparisons.