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Linear Probability, Logit, and Probit Models - John Aldrich - Bog - SAGE Publications Inc - Plusbog.dk

Linear Regression - Damodar N. Gujarati - Bog - SAGE Publications Inc - Plusbog.dk

Introduction to Linear Goal Programming - James P. Ignizio - Bog - SAGE Publications Inc - Plusbog.dk

Multivariate General Linear Models - Richard F. Haase - Bog - SAGE Publications Inc - Plusbog.dk

Interaction Effects in Linear and Generalized Linear Models - Robert L. Kaufman - Bog - SAGE Publications Inc - Plusbog.dk

Hierarchical Linear Modeling - - Bog - SAGE Publications Inc - Plusbog.dk

Ordinal Log-Linear Models - Masako Ishii Kuntz - Bog - SAGE Publications Inc - Plusbog.dk

Generalized Linear Models - Silvia Michelle Torres Pacheco - Bog - SAGE Publications Inc - Plusbog.dk

Hierarchical Linear Models - Anthony S. Bryk - Bog - SAGE Publications Inc - Plusbog.dk

Hierarchical Linear Models - Anthony S. Bryk - Bog - SAGE Publications Inc - Plusbog.dk

"This is a first-class book dealing with one of the most important areas of current research in applied statistics…the methods described are widely applicable…the standard of exposition is extremely high." --Short Book Reviews from the International Statistical Institute "The new chapters (10-14) improve an already excellent resource for research and instruction. Their content expands the coverage of the book to include models for discrete level-1 outcomes, non-nested level-2 units, incomplete data, and measurement error---all vital topics in contemporary social statistics. In the tradition of the first edition, they are clearly written and make good use of interesting substantive examples to illustrate the methods. Advanced graduate students and social researchers will find the expanded edition immediately useful and pertinent to their research." --TED GERBER, Sociology, University of Arizona "Chapter 11 was also exciting reading and shows the versatility of the mixed model with the EM algorithm. There was a new revelation on practically every page. I found the exposition to be extremely clear. It was like being led from one treasure room to another, and all of the gems are inherently useful. These are problems that researchers face everyday, and this chapter gives us an excellent alternative to how we have traditionally handled these problems."--PAUL SWANK, Houston School of Nursing, University of Texas, Houston Popular in the First Edition for its rich, illustrative examples and lucid explanations of the theory and use of hierarchical linear models (HLM), the book has been reorganized into four parts with four completely new chapters. The first two parts, Part I on "The Logic of Hierarchical Linear Modeling" and Part II on "Basic Applications" closely parallel the first nine chapters of the previous edition with significant expansions and technical clarifications, such as: * An intuitive introductory summary of the basic procedures for estimation and inference used with HLM models that only requires a minimal level of mathematical sophistication in Chapter 3* New section on multivariate growth models in Chapter 6 * A discussion of research synthesis or meta-analysis applications in Chapter 7* Data analytic advice on centering of level-1 predictors and new material on plausible value intervals and robust standard estimators While the first edition confined its attention to continuously distributed outcomes at level 1, this second edition now includes coverage of an array of outcomes types in Part III: * New Chapter 10 considers applications of hierarchical models in the case of binary outcomes, counted data, ordered categories, and multinomial outcomes using detailed examples to illustrate each case * New Chapter 11 on latent variable models, including estimating regressions from missing data, estimating regressions when predictors are measured with error, and embedding item response models within the framework of the HLM model * New introduction to the logic of Bayesian inference with applications to hierarchical data (Chapter 13) The authors conclude in Part IV with the statistical theory and computations used throughout the book, including univariate models with normal level-1 errors, multivariate linear models, and hierarchical generalized linear models.

DKK 1016.00
1

Generalized Linear Models for Bounded and Limited Quantitative Variables - Michael Smithson - Bog - SAGE Publications Inc - Plusbog.dk

An Introduction to Generalized Linear Models - George Henry Dunteman - Bog - SAGE Publications Inc - Plusbog.dk

An Introduction to Generalized Linear Models - George Henry Dunteman - Bog - SAGE Publications Inc - Plusbog.dk

Do you have data that is not normally distributed and don′t know how to analyze it using generalized linear models (GLM)? Beginning with a discussion of fundamental statistical modeling concepts in a multiple regression framework, the authors extend these concepts to GLM (including Poisson regression. logistic regression, and proportional hazards models) and demonstrate the similarity of various regression models to GLM. Each procedure is illustrated using real life data sets, and the computer instructions and results will be presented for each example. Throughout the book, there is an emphasis on link functions and error distribution and how the model specifications translate into likelihood functions that can, through maximum likelihood estimation be used to estimate the regression parameters and their associated standard errors. This book provides readers with basic modeling principles that are applicable to a wide variety of situations.Key Features: - Provides an accessible but thorough introduction to GLM, exponential family distribution, and maximum likelihood estimation- Includes discussion on checking model adequacy and description on how to use SAS to fit GLM- Describes the connection between survival analysis and GLM This book is an ideal text for social science researchers who do not have a strong statistical background, but would like to learn more advanced techniques having taken an introductory course covering regression analysis.

DKK 401.00
1

Fixed Effects Regression Models - Paul D. Allison - Bog - SAGE Publications Inc - Plusbog.dk

Regression Diagnostics - John Fox - Bog - SAGE Publications Inc - Plusbog.dk

A Mathematical Primer for Social Statistics - John Fox - Bog - SAGE Publications Inc - Plusbog.dk

Introducing Anova and Ancova - Andrew Rutherford - Bog - SAGE Publications Inc - Plusbog.dk

Analysis of Nominal Data - H. T. Reynolds - Bog - SAGE Publications Inc - Plusbog.dk

Nonparametric Simple Regression - John Fox - Bog - SAGE Publications Inc - Plusbog.dk

Matrix Algebra - Krishnan Namboodiri - Bog - SAGE Publications Inc - Plusbog.dk

The Multivariate Social Scientist - Nick Sofroniou - Bog - SAGE Publications Inc - Plusbog.dk

Quantile Regression - Daniel Q. Naiman - Bog - SAGE Publications Inc - Plusbog.dk

Quantile Regression - Daniel Q. Naiman - Bog - SAGE Publications Inc - Plusbog.dk

Quantile Regression , the first book of Hao and Naiman′s two-book series, establishes the seldom recognized link between inequality studies and quantile regression models. Though separate methodological literature exists for each subject, the authors seek to explore the natural connections between this increasingly sought-after tool and research topics in the social sciences. Quantile regression as a method does not rely on assumptions as restrictive as those for the classical linear regression; though more traditional models such as least squares linear regression are more widely utilized, Hao and Naiman show, in their application of quantile regression to empirical research, how this model yields a more complete understanding of inequality. Inequality is a perennial concern in the social sciences, and recently there has been much research in health inequality as well. Major software packages have also gradually implemented quantile regression. Quantile Regression will be of interest not only to the traditional social science market but other markets such as the health and public health related disciplines. Key Features: Establishes a natural link between quantile regression and inequality studies in the social sciences Contains clearly defined terms, simplified empirical equations, illustrative graphs, empirical tables and graphs from examples Includes computational codes using statistical software popular among social scientists Oriented to empirical research

DKK 397.00
1

Multiple and Generalized Nonparametric Regression - John Fox - Bog - SAGE Publications Inc - Plusbog.dk

Multiple and Generalized Nonparametric Regression - John Fox - Bog - SAGE Publications Inc - Plusbog.dk

This book builds on John Fox′s previous volume in the QASS Series, Non Parametric Simple Regression. In this monograph readers learn to estimate and plot smooth functions when there are multiple independent variables. While regression analysis traces the dependence of the distribution of a response variable to see if it bears a particular (linear) relationship to one or more of the predictors, nonparametric regression analysis makes minimal assumptions about the form of relationship between the average response and the predictors. This makes nonparametric regression a more useful technique for analyzing data in which there are several predictors that may combine additively to influence the response. (An example could be something like birth order/gender/and temperament on achievement motivation). Unfortunately, researchers have not had accessible information on nonparametric regression analysis, until now. Beginning with presentation of nonparametric regression based on dividing the data into bins and averaging the response values in each bin, Fox introduces readers to the techniques of kernel estimation, additive nonparametric regression, and the ways nonparametric regression can be employed to select transformations of the data preceding a linear least-squares fit. The book concludes with ways nonparametric regression can be generalized to logit, probit, and Poisson regression.

DKK 401.00
1