scispace - formally typeset
Open AccessBook

Applied Survey Methods: A Statistical Perspective

TLDR
The Survey Process is presented, Step-by-Step, with a focus onsampling the Non-Internet Population and the Popularity of Online Research.
Abstract
Preface. 1. The Survey Process. 1.1. About Surveys. 1.2. A Survey, Step-by-Step. 1.3. Some History of Survey Research. 1.4. This Book. 1.5. Samplonia. Exercises. 2. Basic Concepts. 2.1. The Survey Objectives. 2.2. The Target Population. 2.3. The Sampling Frame. 2.4. Sampling. 2.5. Estimation. Exercises. 3. Questionnaire Design. 3.1. The Questionnaire. 3.2. Factual and Nonfactual Questions. 3.3. The Question Text. 3.4. Answer Types. 3.5. Question Order. 3.6. Questionnaire Testing. Exercises. 4. Single Sampling Designs. 4.1. Simple Random Sampling. 4.2. Systematic Sampling. 4.3. Unequal Probability Sampling. 4.4. Systematic Sampling with Unequal Probabilities. Exercises. 5. Composite Sampling Designs. 5.1. Stratified Sampling. 5.2. Cluster Sampling. 5.3. Two-Stage Sampling. 5.4. Two-Dimensional Sampling. Exercises. 6. Estimators. 6.1. Use of Auxiliary Information. 6.2. A Descriptive Model. 6.3. The Direct Estimator. 6.4. The Ratio Estimator. 6.5. The Regression Estimator. 6.6. The Poststratification Estimator. Exercises. 7. Data Collection. 7.1. Traditional Data Collection. 7.2. Computer-Assisted Interviewing. 7.3. Mixed-Mode Data Collection. 7.4. Electronic Questionnaires. 7.5. Data Collection with Blaise. Exercises. 8. The Quality of the Results. 8.1. Errors in Surveys. 8.2. Detection and Correction of Errors. 8.3. Imputation Techniques. 8.4. Data Editing Strategies. Exercises. 9. The Nonresponse Problem. 9.1. Nonresponse. 9.2. Response Rates. 9.3. Models for Nonresponse. 9.4. Analysis of Nonresponse. 9.5. Nonresponse Correction Techniques. Exercises. 10. Weighting Adjustment. 10.1. Introduction. 10.2. Poststratification. 10.3. Linear Weighting. 10.4. Multiplicative Weighting. 10.5. Calibration Estimation. 10.6. Other Weighting Issues. 10.7. Use of Propensity Scores. 10.8. A Practical Example. Exercises. 11. Online Surveys. 11.1. The Popularity of Online Research. 11.2. Errors in Online Surveys. 11.3. The Theoretical Framework. 11.4. Correction by Adjustment Weighting. 11.5. Correction Using a Reference Survey. 11.6. Sampling the Non-Internet Population. 11.7. Propensity Weighting. 11.8. Simulating the Effects of Undercoverage. 11.9. Simulating the Effects of Self-Selection. 11.10. About the Use of Online Surveys. Exercises. 12. Analysis and Publication. 12.1. About Data Analysis. 12.2. The Analysis of Dirty Data. 12.3. Preparing a Survey Report. 12.4. Use of Graphs. Exercises. 13. Statistical Disclosure Control. 13.1. Introduction. 13.2. The Basic Disclosure Problem. 13.3. The Concept of Uniqueness. 13.4. Disclosure Scenarios. 13.5. Models for the Disclosure Risk. 13.6. Practical Disclosure Protection. Exercises. References. Index.

read more

Citations
More filters
Journal ArticleDOI

Selection Bias in Web Surveys

TL;DR: It is concluded that under-coverage problems may solve itself in the future, but that self-selection leads to unreliable survey outcomes.
Journal ArticleDOI

Factors influencing bike share membership: An analysis of Melbourne and Brisbane

TL;DR: In this paper, a logistic regression model revealed several significant predictors of membership including reactions to mandatory helmet legislation, riding activity over the previous month, and the degree to which convenience motivated private bike riding.

Factors influencing bike share membership : an analysis of Melbourne and Brisbane

TL;DR: In this article, a logistic regression model revealed several significant predictors of membership including reactions to mandatory helmet legislation, riding activity over the previous month, and the degree to which convenience motivated private bike riding.
Journal ArticleDOI

The Importance of Selection Bias in Internet Surveys

TL;DR: This paper aims to describe methodological problems about selection bias issues and to give a review in internet surveys, to show the effect of various correction techniques for reducing selection bias.
Journal ArticleDOI

Service Lifetime, Storage Time, and Disposal Pathways of Electronic Equipment A Swiss Case Study

TL;DR: In this article, the authors investigated the service lifetime, storage time, and disposal pathways of ten electronic device types, based on data from an online survey complemented by structured interviews, and found that the storage behavior is similar for most device types.