You are here

Disable VAT on Taiwan

Unfortunately, as of 1 January 2020 SAGE Ltd is no longer able to support sales of electronically supplied services to Taiwan customers that are not Taiwan VAT registered. We apologise for any inconvenience. For more information or to place a print-only order, please contact uk.customerservices@sagepub.co.uk.

Confidence Intervals
Share
Share

Confidence Intervals



January 2003 | 104 pages | SAGE Publications, Inc
Using lots of easy to understand examples from different disciplines, the author introduces the basis of the confidence interval framework and provides the criteria for `best' confidence intervals, along with the trade-offs between confidence and precision.

The book covers such pertinent topics as: the transformation principle whereby a confidence interval for a parameter may be used to construct an interval for any monotonic transformation of that parameter; confidence intervals on distributions whose shape changes with the value of the parameter being estimated; and, the relationship between confidence interval and significance testing frameworks, particularly regarding power.

 
Ch 1 Introduction and Overview
 
Ch 2 Confidence Statements and Interval Estimates
Why Confidence Intervals?

 
 
Ch 3 Central Confidence Intervals
Central and Standardizable versus Noncentral Distributions

 
Confidence Intervals Using the Central t and Normal Distributions

 
Confidence Intervals Using the Central Chi-Square and F Distributions

 
Transformation Principle

 
 
Ch 4 Noncentral Confidence Intervals for Standardized Effect Sizes
Noncentral Distributions

 
Computing Noncentral Confidence Intervals

 
 
Ch 5 Applications in Anova and Regression
Fixed-Effects ANOVA

 
Random-Effects ANOVA

 
A Priori and Post-Hoc Contrasts

 
Regression: Multiple, Partial, and Semi-Partial Correlations

 
Effect-Size Statistics for MANOVA and Setwise Regression

 
Confidence Interval for a Regression Coefficient

 
Goodness of Fit Indices in Structural Equations Models

 
 
Ch 6 Applications in Categorical Data Analysis
Odds Ratio, Difference between Proportions and Relative Risk

 
Chi-Square Confidence Intervals for One Variable

 
Two-Way Contingency Tables

 
Effects in Log-Linear and Logistic Regression Models

 
 
Ch 7 Significance Tests and Power Analysis
Significance Tests and Model Comparison

 
Power and Precision

 
Designing Studies Using Power Analysis and Confidence Intervals

 
Confidence Intervals for Power

 
 
Concluding Remarks
 
References
 
About the Author

For instructors

Select a Purchasing Option

SAGE Research Methods is a research methods tool created to help researchers, faculty and students with their research projects. SAGE Research Methods links over 175,000 pages of SAGE’s renowned book, journal and reference content with truly advanced search and discovery tools. Researchers can explore methods concepts to help them design research projects, understand particular methods or identify a new method, conduct their research, and write up their findings. Since SAGE Research Methods focuses on methodology rather than disciplines, it can be used across the social sciences, health sciences, and more.

With SAGE Research Methods, researchers can explore their chosen method across the depth and breadth of content, expanding or refining their search as needed; read online, print, or email full-text content; utilize suggested related methods and links to related authors from SAGE Research Methods' robust library and unique features; and even share their own collections of content through Methods Lists. SAGE Research Methods contains content from over 720 books, dictionaries, encyclopedias, and handbooks, the entire “Little Green Book,” and "Little Blue Book” series, two Major Works collating a selection of journal articles, and specially commissioned videos.