Statistical Power Analysis with Missing Data

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A01=Adam Davey
A01=Jyoti "Tina" Savla
Author_Adam Davey
Author_Jyoti "Tina" Savla
Auxiliary Variable
Category=GPS
Category=JB
Category=JHB
Category=JMB
Category=JNA
Category=PBT
covariance
eq_bestseller
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_society-politics
equation
Estimate Statistical Power
FI PS
FI Te
FIML Analysis
graduate level statistics
Growth Curve Model
implied
Incomplete Data Model
LISREL Model
MAR Data
matrix
mcar
MCAR Case
MCAR Data
Missing Data
Missing Data Conditions
Missing Data Groups
Missing Data Increase
Missing Data Mechanism
Missing Data Patterns
Missing Data Proportions
MO NY
model
modeling
Monte Carlo methods
NCP
Noncentral Chi Square Distribution
power analysis with incomplete data
research design optimization
sample
SAS SPSS Stata syntax
SAS Syntax
size
Small Monte Carlo Study
statistical inference
structural
Structural Equation Modeling
structural equation models
V1 V2 V3

Product details

  • ISBN 9780805863703
  • Weight: 498g
  • Dimensions: 152 x 229mm
  • Publication Date: 20 Aug 2009
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Paperback
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Statistical power analysis has revolutionized the ways in which we conduct and evaluate research. Similar developments in the statistical analysis of incomplete (missing) data are gaining more widespread applications. This volume brings statistical power and incomplete data together under a common framework, in a way that is readily accessible to those with only an introductory familiarity with structural equation modeling. It answers many practical questions such as:

  • How missing data affects the statistical power in a study
  • How much power is likely with different amounts and types of missing data
  • How to increase the power of a design in the presence of missing data, and
  • How to identify the most powerful design in the presence of missing data.

Points of Reflection encourage readers to stop and test their understanding of the material. Try Me sections test one’s ability to apply the material. Troubleshooting Tips help to prevent commonly encountered problems. Exercises reinforce content and Additional Readings provide sources for delving more deeply into selected topics. Numerous examples demonstrate the book’s application to a variety of disciplines. Each issue is accompanied by its potential strengths and shortcomings and examples using a variety of software packages (SAS, SPSS, Stata, LISREL, AMOS, and MPlus). Syntax is provided using a single software program to promote continuity but in each case, parallel syntax using the other packages is presented in appendixes. Routines, data sets, syntax files, and links to student versions of software packages are found at www.psypress.com/davey. The worked examples in Part 2 also provide results from a wider set of estimated models. These tables, and accompanying syntax, can be used to estimate statistical power or required sample size for similar problems under a wide range of conditions.

Class-tested at Temple, Virginia Tech, and Miami University of Ohio, this brief text is an ideal supplement for graduate courses in applied statistics, statistics II, intermediate or advanced statistics, experimental design, structural equation modeling, power analysis, and research methods taught in departments of psychology, human development, education, sociology, nursing, social work, gerontology and other social and health sciences. The book’s applied approach will also appeal to researchers in these areas. Sections covering Fundamentals, Applications, and Extensions are designed to take readers from first steps to mastery.

Temple University, Philadelphia, Pennsylvania, USA Virginia Technical Institute, Blacksburg, USA

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