Growth Curve Analysis and Visualization Using R

Growth Curve Analysis and Visualization Using R
Author :
Publisher : CRC Press
Total Pages : 192
Release :
ISBN-10 : 9781315362700
ISBN-13 : 1315362708
Rating : 4/5 (00 Downloads)

Synopsis Growth Curve Analysis and Visualization Using R by : Daniel Mirman

Learn How to Use Growth Curve Analysis with Your Time Course Data An increasingly prominent statistical tool in the behavioral sciences, multilevel regression offers a statistical framework for analyzing longitudinal or time course data. It also provides a way to quantify and analyze individual differences, such as developmental and neuropsychological, in the context of a model of the overall group effects. To harness the practical aspects of this useful tool, behavioral science researchers need a concise, accessible resource that explains how to implement these analysis methods. Growth Curve Analysis and Visualization Using R provides a practical, easy-to-understand guide to carrying out multilevel regression/growth curve analysis (GCA) of time course or longitudinal data in the behavioral sciences, particularly cognitive science, cognitive neuroscience, and psychology. With a minimum of statistical theory and technical jargon, the author focuses on the concrete issue of applying GCA to behavioral science data and individual differences. The book begins with discussing problems encountered when analyzing time course data, how to visualize time course data using the ggplot2 package, and how to format data for GCA and plotting. It then presents a conceptual overview of GCA and the core analysis syntax using the lme4 package and demonstrates how to plot model fits. The book describes how to deal with change over time that is not linear, how to structure random effects, how GCA and regression use categorical predictors, and how to conduct multiple simultaneous comparisons among different levels of a factor. It also compares the advantages and disadvantages of approaches to implementing logistic and quasi-logistic GCA and discusses how to use GCA to analyze individual differences as both fixed and random effects. The final chapter presents the code for all of the key examples along with samples demonstrating how to report GCA results. Throughout the book, R code illustrates how to implement the analyses and generate the graphs. Each chapter ends with exercises to test your understanding. The example datasets, code for solutions to the exercises, and supplemental code and examples are available on the author’s website.

Growth Curve Analysis and Visualization Using R

Growth Curve Analysis and Visualization Using R
Author :
Publisher : CRC Press
Total Pages : 205
Release :
ISBN-10 : 9781315360331
ISBN-13 : 1315360330
Rating : 4/5 (31 Downloads)

Synopsis Growth Curve Analysis and Visualization Using R by : Daniel Mirman

Learn How to Use Growth Curve Analysis with Your Time Course Data An increasingly prominent statistical tool in the behavioral sciences, multilevel regression offers a statistical framework for analyzing longitudinal or time course data. It also provides a way to quantify and analyze individual differences, such as developmental and neuropsychological, in the context of a model of the overall group effects. To harness the practical aspects of this useful tool, behavioral science researchers need a concise, accessible resource that explains how to implement these analysis methods. Growth Curve Analysis and Visualization Using R provides a practical, easy-to-understand guide to carrying out multilevel regression/growth curve analysis (GCA) of time course or longitudinal data in the behavioral sciences, particularly cognitive science, cognitive neuroscience, and psychology. With a minimum of statistical theory and technical jargon, the author focuses on the concrete issue of applying GCA to behavioral science data and individual differences. The book begins with discussing problems encountered when analyzing time course data, how to visualize time course data using the ggplot2 package, and how to format data for GCA and plotting. It then presents a conceptual overview of GCA and the core analysis syntax using the lme4 package and demonstrates how to plot model fits. The book describes how to deal with change over time that is not linear, how to structure random effects, how GCA and regression use categorical predictors, and how to conduct multiple simultaneous comparisons among different levels of a factor. It also compares the advantages and disadvantages of approaches to implementing logistic and quasi-logistic GCA and discusses how to use GCA to analyze individual differences as both fixed and random effects. The final chapter presents the code for all of the key examples along with samples demonstrating how to report GCA results. Throughout the book, R code illustrates how to implement the analyses and generate the graphs. Each chapter ends with exercises to test your understanding. The example datasets, code for solutions to the exercises, and supplemental code and examples are available on the author’s website.

Growth Modeling

Growth Modeling
Author :
Publisher : Guilford Publications
Total Pages : 558
Release :
ISBN-10 : 9781462526062
ISBN-13 : 1462526063
Rating : 4/5 (62 Downloads)

Synopsis Growth Modeling by : Kevin J. Grimm

Growth models are among the core methods for analyzing how and when people change. Discussing both structural equation and multilevel modeling approaches, this book leads readers step by step through applying each model to longitudinal data to answer particular research questions. It demonstrates cutting-edge ways to describe linear and nonlinear change patterns, examine within-person and between-person differences in change, study change in latent variables, identify leading and lagging indicators of change, evaluate co-occurring patterns of change across multiple variables, and more. User-friendly features include real data examples, code (for Mplus or NLMIXED in SAS, and OpenMx or nlme in R), discussion of the output, and interpretation of each model's results. User-Friendly Features *Real, worked-through longitudinal data examples serving as illustrations in each chapter. *Script boxes that provide code for fitting the models to example data and facilitate application to the reader's own data. *"Important Considerations" sections offering caveats, warnings, and recommendations for the use of specific models. *Companion website supplying datasets and syntax for the book's examples, along with additional code in SAS/R for linear mixed-effects modeling.

Medical Statistics from A to Z

Medical Statistics from A to Z
Author :
Publisher : Cambridge University Press
Total Pages : 293
Release :
ISBN-10 : 9781108826464
ISBN-13 : 1108826466
Rating : 4/5 (64 Downloads)

Synopsis Medical Statistics from A to Z by : Brian S. Everitt

Succinctly explains statistical terms encountered in medicine using non-technical language, giving advice on common pitfalls in techniques.

Longitudinal Data Analysis

Longitudinal Data Analysis
Author :
Publisher : CRC Press
Total Pages : 633
Release :
ISBN-10 : 9781420011579
ISBN-13 : 142001157X
Rating : 4/5 (79 Downloads)

Synopsis Longitudinal Data Analysis by : Garrett Fitzmaurice

Although many books currently available describe statistical models and methods for analyzing longitudinal data, they do not highlight connections between various research threads in the statistical literature. Responding to this void, Longitudinal Data Analysis provides a clear, comprehensive, and unified overview of state-of-the-art theory

Latent Growth Curve Modeling

Latent Growth Curve Modeling
Author :
Publisher : SAGE Publications
Total Pages : 113
Release :
ISBN-10 : 9781506333052
ISBN-13 : 1506333052
Rating : 4/5 (52 Downloads)

Synopsis Latent Growth Curve Modeling by : Kristopher J. Preacher

Latent growth curve modeling (LGM)—a special case of confirmatory factor analysis designed to model change over time—is an indispensable and increasingly ubiquitous approach for modeling longitudinal data. This volume introduces LGM techniques to researchers, provides easy-to-follow, didactic examples of several common growth modeling approaches, and highlights recent advancements regarding the treatment of missing data, parameter estimation, and model fit. The book covers the basic linear LGM, and builds from there to describe more complex functional forms (e.g., polynomial latent curves), multivariate latent growth curves used to model simultaneous change in multiple variables, the inclusion of time-varying covariates, predictors of aspects of change, cohort-sequential designs, and multiple-group models. The authors also highlight approaches to dealing with missing data, different estimation methods, and incorporate discussion of model evaluation and comparison within the context of LGM. The models demonstrate how they may be applied to longitudinal data derived from the NICHD Study of Early Child Care and Youth Development (SECCYD).. Key Features · Provides easy-to-follow, didactic examples of several common growth modeling approaches · Highlights recent advancements regarding the treatment of missing data, parameter estimation, and model fit · Explains the commonalities and differences between latent growth model and multilevel modeling of repeated measures data · Covers the basic linear latent growth model, and builds from there to describe more complex functional forms such as polynomial latent curves, multivariate latent growth curves, time-varying covariates, predictors of aspects of change, cohort-sequential designs, and multiple-group models

Research on Teaching and Learning in Higher Education

Research on Teaching and Learning in Higher Education
Author :
Publisher : Waxmann Verlag
Total Pages : 170
Release :
ISBN-10 : 9783830990260
ISBN-13 : 383099026X
Rating : 4/5 (60 Downloads)

Synopsis Research on Teaching and Learning in Higher Education by : Edith Braun

This international anthology aims at researchers and practitioners interested in the dynamic developments of research on higher education teaching and learning in Europe and beyond. It includes ten chapters covering a wide array of topics and methodologies used by researchers in the Special Interest Group ‘Higher Education’ (SIG4) of the European Association for Research on Learning and Instruction (EARLI). The volume consists of three main sections: the first section includes three chapters addressing different practice- and research-based challenges related to students’ transitions into higher education and their teaching internship. The following four chapters investigate the assessment and development of students’ study paths and skills in a variety of disciplines. The final three chapters present research on student emotions and cultural perspectives, including mixed and multi-method empirical approaches. A key text for those keeping up with the current advances in the field.

Advanced R Statistical Programming and Data Models

Advanced R Statistical Programming and Data Models
Author :
Publisher : Apress
Total Pages : 649
Release :
ISBN-10 : 9781484228722
ISBN-13 : 1484228723
Rating : 4/5 (22 Downloads)

Synopsis Advanced R Statistical Programming and Data Models by : Matt Wiley

Carry out a variety of advanced statistical analyses including generalized additive models, mixed effects models, multiple imputation, machine learning, and missing data techniques using R. Each chapter starts with conceptual background information about the techniques, includes multiple examples using R to achieve results, and concludes with a case study. Written by Matt and Joshua F. Wiley, Advanced R Statistical Programming and Data Models shows you how to conduct data analysis using the popular R language. You’ll delve into the preconditions or hypothesis for various statistical tests and techniques and work through concrete examples using R for a variety of these next-level analytics. This is a must-have guide and reference on using and programming with the R language. What You’ll LearnConduct advanced analyses in R including: generalized linear models, generalized additive models, mixed effects models, machine learning, and parallel processing Carry out regression modeling using R data visualization, linear and advanced regression, additive models, survival / time to event analysis Handle machine learning using R including parallel processing, dimension reduction, and feature selection and classification Address missing data using multiple imputation in R Work on factor analysis, generalized linear mixed models, and modeling intraindividual variability Who This Book Is For Working professionals, researchers, or students who are familiar with R and basic statistical techniques such as linear regression and who want to learn how to use R to perform more advanced analytics. Particularly, researchers and data analysts in the social sciences may benefit from these techniques. Additionally, analysts who need parallel processing to speed up analytics are given proven code to reduce time to result(s).

Structural Equation Modeling

Structural Equation Modeling
Author :
Publisher : SAGE Publications
Total Pages : 306
Release :
ISBN-10 : 9781483342597
ISBN-13 : 148334259X
Rating : 4/5 (97 Downloads)

Synopsis Structural Equation Modeling by : David Kaplan

Using detailed, empirical examples, Structural Equation Modeling, Second Edition, presents a thorough and sophisticated treatment of the foundations of structural equation modeling (SEM). It also demonstrates how SEM can provide a unique lens on the problems social and behavioral scientists face. Intended Audience While the book assumes some knowledge and background in statistics, it guides readers through the foundations and critical assumptions of SEM in an easy-to-understand manner.

The R Book

The R Book
Author :
Publisher : John Wiley & Sons
Total Pages : 953
Release :
ISBN-10 : 0470515066
ISBN-13 : 9780470515068
Rating : 4/5 (66 Downloads)

Synopsis The R Book by : Michael J. Crawley

The high-level language of R is recognized as one of the mostpowerful and flexible statistical software environments, and israpidly becoming the standard setting for quantitative analysis,statistics and graphics. R provides free access to unrivalledcoverage and cutting-edge applications, enabling the user to applynumerous statistical methods ranging from simple regression to timeseries or multivariate analysis. Building on the success of the author’s bestsellingStatistics: An Introduction using R, The R Book ispacked with worked examples, providing an all inclusive guide to R,ideal for novice and more accomplished users alike. The bookassumes no background in statistics or computing and introduces theadvantages of the R environment, detailing its applications in awide range of disciplines. Provides the first comprehensive reference manual for the Rlanguage, including practical guidance and full coverage of thegraphics facilities. Introduces all the statistical models covered by R, beginningwith simple classical tests such as chi-square and t-test. Proceeds to examine more advance methods, from regression andanalysis of variance, through to generalized linear models,generalized mixed models, time series, spatial statistics,multivariate statistics and much more. The R Book is aimed at undergraduates, postgraduates andprofessionals in science, engineering and medicine. It is alsoideal for students and professionals in statistics, economics,geography and the social sciences.