Sampling Statistics
Part 560 of the Wiley in Survey Methodology series
Discover the latest developments and current practices in survey sampling.
Survey sampling is an important component of research in many fields, and as the importance of survey sampling continues to grow, sophisticated sampling techniques that are both economical and scientifically reliable are essential to planning statistical research and the design of experiments. “Sampling Statistics” presents estimation techniques and sampling concepts to facilitate the application of model-based procedures to survey samples.
The book begins with an introduction to standard probability sampling concepts, which provides the foundation for studying samples selected from a finite population. The development of the theory of complex sampling methods is detailed, and subsequent chapters explore the construction of estimators, sample design, replication variance estimation, and procedures such as nonresponse adjustment and small area estimation where models play a key role. A final chapter covers analytic studies in which survey data are used for the estimation of parameters for a subject matter model.
The author draws upon his extensive experience with survey samples in the book's numerous examples. Both the production of "general use" databases and the analytic study of a limited number of characteristics are discussed. Exercises at the end of each chapter allow readers to test their comprehension of the presented concepts and techniques, and the references provide further resources for study.
“Sampling Statistics” is an ideal book for courses in survey sampling at the graduate level. It is also a valuable reference for practicing statisticians who analyze survey data or are involved in the design of sample surveys.
Complex Surveys
A Guide to Analysis Using R
Part 565 of the Wiley in Survey Methodology series
A complete guide to carrying out complex survey analysis using R
As survey analysis continues to serve as a core component of sociological research, researchers are increasingly relying upon data gathered from complex surveys to carry out traditional analyses. Complex Surveys is a practical guide to the analysis of this kind of data using R, the freely available and downloadable statistical programming language. As creator of the specific survey package for R, the author provides the ultimate presentation of how to successfully use the software for analyzing data from complex surveys while also utilizing the most current data from health and social sciences studies to demonstrate the application of survey research methods in these fields.
The book begins with coverage of basic tools and topics within survey analysis such as simple and stratified sampling, cluster sampling, linear regression, and categorical data regression. Subsequent chapters delve into more technical aspects of complex survey analysis, including post-stratification, two-phase sampling, missing data, and causal inference. Throughout the book, an emphasis is placed on graphics, regression modeling, and two-phase designs. In addition, the author supplies a unique discussion of epidemiological two-phase designs as well as probability-weighting for causal inference. All of the book's examples and figures are generated using R, and a related Web site provides the R code that allows readers to reproduce the presented content. Each chapter concludes with exercises that vary in level of complexity, and detailed appendices outline additional mathematical and computational descriptions to assist readers with comparing results from various software systems.
Complex Surveys is an excellent book for courses on sampling and complex surveys at the upper-undergraduate and graduate levels. It is also a practical reference guide for applied statisticians and practitioners in the social and health sciences who use statistics in their everyday work.
Question Evaluation Methods
Contributing to the Science of Data Quality
Part 567 of the Wiley in Survey Methodology series
Insightful observations on common question evaluation methods and best practices for data collection in survey research.
Featuring contributions from leading researchers and academicians in the field of survey research, “Question Evaluation Methods: Contributing to the Science of Data Quality” sheds light on question response error and introduces an interdisciplinary, cross-method approach that is essential for advancing knowledge about data quality and ensuring the credibility of conclusions drawn from surveys and censuses. Offering a variety of expert analyses of question evaluation methods, the book provides recommendations and best practices for researchers working with data in the health and social sciences.
Based on a workshop held at the National Center for Health Statistics (NCHS), this book presents and compares various question evaluation methods that are used in modern-day data collection and analysis. Each section includes an introduction to a method by a leading authority in the field, followed by responses from other experts that outline related strengths, weaknesses, and underlying assumptions. Topics covered include:
• Behavior coding
• Cognitive interviewing
• Item response theory
• Latent class analysis
• Split-sample experiments
• Multitrait-multimethod experiments
• Field-based data methods
A concluding discussion identifies common themes across the presented material and their relevance to the future of survey methods, data analysis, and the production of Federal statistics. Together, the methods presented in this book offer researchers various scientific approaches to evaluating survey quality to ensure that the responses to these questions result in reliable, high-quality data.
“Question Evaluation Methods” is a valuable supplement for courses on questionnaire design, survey methods, and evaluation methods at the upper-undergraduate and graduate levels. it also serves as a reference for government statisticians, survey methodologists, and researchers and practitioners who carry out survey research in the areas of the social and health sciences.
Latent Class Analysis of Survey Error
Part 571 of the Wiley in Survey Methodology series
Combining theoretical, methodological, and practical aspects, Latent Class Analysis of Survey Error successfully guides readers through the accurate interpretation of survey results for quality evaluation and improvement. This book is a comprehensive resource on the key statistical tools and techniques employed during the modeling and estimation of classification errors, featuring a special focus on both latent class analysis (LCA) techniques and models for categorical data from complex sample surveys.
Drawing from his extensive experience in the field of survey methodology, the author examines early models for survey measurement error and identifies their similarities and differences as well as their strengths and weaknesses. Subsequent chapters treat topics related to modeling, estimating, and reducing errors in surveys, including:
• Measurement error modeling for categorical data
• The Hui-Walter model and other methods for two indicators
• The EM algorithm and its role in latent class model parameter estimation
• Latent class models for three or more indicators
• Techniques for interpretation of model parameter estimates
• Advanced topics in LCA, including sparse data, boundary values, unidentifiability, and local maxima
• Special considerations for analyzing data from clustered and unequal probability samples with nonresponse
• The current state of LCA and MLCA (multilevel latent class analysis), and an insightful discussion on areas for further research
Throughout the book, more than 100 real-world examples describe the presented methods in detail, and readers are guided through the use of lEM software to replicate the presented analyses. Appendices supply a primer on categorical data analysis, and a related Web site houses the lEM software.
Extensively class-tested to ensure an accessible presentation, “Latent Class Analysis of Survey Error” is an excellent book for courses on measurement error and survey methodology at the graduate level. The book also serves as a valuable reference for researchers and practitioners working in business, government, and the social sciences who develop, implement, or evaluate surveys.
Improving Surveys With Paradata
Analytic Uses of Process Information
Part 581 of the Wiley in Survey Methodology series
Explore the practices and cutting-edge research on the new and exciting topic of paradata.
Paradata are measurements related to the process of collecting survey data.
“Improving Surveys with Paradata: Analytic Uses of Process Information” is the most accessible and comprehensive contribution to this up-and-coming area in survey methodology.
Featuring contributions from leading experts in the field, “Improving Surveys with Paradata: Analytic Uses of Process Information” introduces and reviews issues involved in the collection and analysis of paradata. The book presents readers with an overview of the indispensable techniques and new, innovative research on improving survey quality and total survey error. Along with several case studies, topics include:
• Using paradata to monitor fieldwork activity in face-to-face, telephone, and web surveys
• Guiding intervention decisions during data collection
• Analysis of measurement, nonresponse, and coverage error via paradata
Providing a practical, encompassing guide to the subject of paradata, the book is aimed at both producers and users of survey data. The book also serves as an excellent resource for courses on data collection, survey methodology, and nonresponse and measurement error.
Online Panel Research
A Data Quality Perspective
Part of the Wiley in Survey Methodology series
Provides new insights into the accuracy and value of online panels for completing surveys.
Over the last decade, there has been a major global shift in survey and market research towards data collection, using samples selected from online panels. Yet despite their widespread use, remarkably little is known about the quality of the resulting data.
This edited volume is one of the first attempts to carefully examine the quality of the survey data being generated by online samples. It describes some of the best empirically-based research on what has become a very important yet controversial method of collecting data. Online Panel Research presents 19 chapters of previously unpublished work addressing a wide range of topics, including coverage bias, nonresponse, measurement error, adjustment techniques, the relationship between nonresponse and measurement error, impact of smartphone adoption on data collection, Internet rating panels, and operational issues.
• Covers controversial topics such as professional respondents, speeders, and respondent validation.
• Addresses cutting-edge topics such as the challenge of smartphone survey completion, software to manage online panels, and Internet and mobile ratings panels.
• Discusses and provides examples of comparison studies between online panels and other surveys or benchmarks.
• Describes adjustment techniques to improve sample representativeness.
• Addresses coverage, nonresponse, attrition, and the relationship between nonresponse and measurement error with examples using data from the United States and Europe.
• Addresses practical questions such as motivations for joining an online panel and best practices for managing communications with panelists.
• Presents a meta-analysis of determinants of response quantity.
• Features contributions from 50 international authors with a wide variety of backgrounds and expertise.
This book will be an invaluable resource for opinion and market researchers, academic researchers relying on web-based data collection, governmental researchers, statisticians, psychologists, sociologists, and other research practitioners.
Advances in Comparative Survey Methods
Multinational, Multiregional, and Multicultural Contexts (3MC)
Part of the Wiley in Survey Methodology series
Covers the latest methodologies and research on international comparative surveys with contributions from noted experts in the field.
“Advances in Comparative Survey Methodology” examines the most recent advances in methodology and operations as well as the technical developments in international survey research. With contributions from a panel of international experts, the text includes information on the use of Big Data in concert with survey data, collecting biomarkers, the human subject regulatory environment, innovations in data collection methodology and sampling techniques, use of paradata across the survey lifecycle, metadata standards for dissemination, and new analytical techniques.
This important resource:
• Contains contributions from key experts in their respective fields of study from around the globe
• Highlights innovative approaches in resource poor settings, and innovative approaches to combining survey and other data
• Includes material that is organized within the total survey error framework
• Presents extensive and up-to-date references throughout the book
Written for students and academic survey researchers and market researchers engaged in comparative projects, this text represents a unique collaboration that features the latest methodologies and research on global comparative surveys.
Statistical Disclosure Control
Part of the Wiley in Survey Methodology series
A reference to answer all your statistical confidentiality questions.
This handbook provides technical guidance on statistical disclosure control and on how to approach the problem of balancing the need to provide users with statistical outputs and the need to protect the confidentiality of respondents. Statistical disclosure control is combined with other tools such as administrative, legal and IT in order to define a proper data dissemination strategy based on a risk management approach.
The key concepts of statistical disclosure control are presented, along with the methodology and software that can be used to apply various methods of statistical disclosure control. Numerous examples and guidelines are also featured to illustrate the topics covered.
“Statistical Disclosure Control”:
• Presents a combination of both theoretical and practical solutions
• Introduces all the key concepts and definitions involved with statistical disclosure control.
• Provides a high level overview of how to approach problems associated with confidentiality.
• Provides a broad-ranging review of the methods available to control disclosure.
• Explains the subtleties of group disclosure control.
• Features examples throughout the book along with case studies demonstrating how particular methods are used.
• Discusses microdata, magnitude and frequency tabular data, and remote access issues.
• Written by experts within leading National Statistical Institutes.
Official statisticians, academics and market researchers who need to be informed and make decisions on disclosure limitation will benefit from this book.
Total Survey Error in Practice
Part of the Wiley in Survey Methodology series
Featuring a timely presentation of total survey error (TSE), this edited volume introduces valuable tools for understanding and improving survey data quality in the context of evolving large-scale data sets.
This book provides an overview of the TSE framework and current TSE research as related to survey design, data collection, estimation, and analysis. It recognizes that survey data affects many public policy and business decisions and thus focuses on the framework for understanding and improving survey data quality. The book also addresses issues with data quality in official statistics and in social, opinion, and market research as these fields continue to evolve, leading to larger and messier data sets. This perspective challenges survey organizations to find ways to collect and process data more efficiently without sacrificing quality. The volume consists of the most up-to-date research and reporting from over 70 contributors representing the best academics and researchers from a range of fields. The chapters are broken out into five main sections: The Concept of TSE and the TSE Paradigm, Implications for Survey Design, Data Collection and Data Processing Applications, Evaluation and Improvement, and Estimation and Analysis. Each chapter introduces and examines multiple error sources, such as sampling error, measurement error, and nonresponse error, which often offer the greatest risks to data quality, while also encouraging readers not to lose sight of the less commonly studied error sources, such as coverage error, processing error, and specification error. The book also notes the relationships between errors and the ways in which efforts to reduce one type can increase another, resulting in an estimate with larger total error.
This book:
• Features various error sources, and the complex relationships between them, in 25 high-quality chapters on the most up-to-date research in the field of TSE
• Provides comprehensive reviews of the literature on error sources as well as data collection approaches and estimation methods to reduce their effects
• Presents examples of recent international events that demonstrate the effects of data error, the importance of survey data quality, and the real-world issues that arise from these errors
• Spans the four pillars of the total survey error paradigm (design, data collection, evaluation and analysis) to address key data quality issues in official statistics and survey research
“Total Survey Error in Practice” is a reference for survey researchers and data scientists in research areas that include social science, public opinion, public policy, and business. It can also be used as a textbook or supplementary material for a graduate-level course in survey research methods.
Register-Based Statistics
Registers and the National Statistical System
Part of the Wiley in Survey Methodology series
Rediscover this authoritative guide to register-based statistics filled with significant new improvements.
In the newly revised Third Edition of “Register-based Statistics: Registers and the National Statistical System”, Anders Wallgren and Britt Wallgren deliver a robust exploration of how register-based statistics can be used to its fullest potential. The authors describe how statistical institutes can work on long-term projects to improve administrative systems, as well as estimation methods that can improve the quality of statistical estimates based on registers with quality problems. Readers will also discover how to improve the ways register-statistical issues are introduced, as well as how to create population registers.
Finally, the authors draw on their experience from teaching and consulting in several countries to explain how to implement register-based statistics.
Key features of the third edition:
• Discusses the problems new register countries face
• Explains how registers will improve the efficiency of the national statistical system
• Clarifies the importance of the system approach
• Describes how a statistical population register can be created
• Registers-based statistics require new skills and understanding of new concepts
• Many important quality indicators are described
• Explains difficult topics in a pedagogic way
Perfect for staff at national statistical institutes and administrative and ministerial authorities belonging to national statistical systems, “Register-based Statistics” will also prove to be an indispensable resource for undergraduate and graduate students in statistics programs and courses, as well as survey researchers and practitioners.
Register-Based Statistics
Statistical Methods for Administrative Data
Part of the Wiley in Survey Methodology series
This book provides a comprehensive and up to date treatment of theory and practical implementation in Register-based statistics. It begins by defining the area, before explaining how to structure such systems, as well as detailing alternative approaches. It explains how to create statistical registers, how to implement quality assurance, and the use of IT systems for register-based statistics. Further to this, clear details are given about the practicalities of implementing such statistical methods, such as protection of privacy and the coordination and coherence of such an undertaking.
This edition offers a full understanding of both the principles and practices of this increasingly popular area of statistics and can be considered a first step to a more systematic way of working with register-statistical issues. This book addresses the growing global interest in the topic and employs a much broader, more international approach than the 1st edition. New chapters explore different kinds of register-based surveys, such as preconditions for register-based statistics and comparing sample survey and administrative data. Furthermore, the authors present discussions on register-based census, national accounts and the transition towards a register-based system as well as presenting new chapters on quality assessment of administrative sources and production process quality.
Design, Evaluation, and Analysis of Questionnaires for Survey Research
Part of the Wiley in Survey Methodology series
Praise for the First Edition
"...this book is quite inspiring, giving many practical ideas for survey research, especially for designing better questionnaires."
-International Statistical Review
Reflecting modern developments in the field of survey research, the Second Edition of Design, Evaluation, and Analysis of Questionnaires for Survey Research continues to provide cutting-edge analysis of the important decisions researchers make throughout the survey design process.
The new edition covers the essential methodologies and statistical tools utilized to create reliable and accurate survey questionnaires, which unveils the relationship between individual question characteristics and overall question quality. Since the First Edition, the computer program Survey Quality Prediction (SQP) has been updated to include new predictions of the quality of survey questions on the basis of analyses of Multi-Trait Multi-Method experiments. The improved program contains over 60,000 questions, with translations in most European languages. Featuring an expanded explanation of the usage and limitations of SQP 2.0, the Second Edition also includes:
• New practice problems to provide readers with real-world experience in survey research and questionnaire design
• A comprehensive outline of the steps for creating and testing survey questionnaires
• Contemporary examples that demonstrate the many pitfalls of questionnaire design and ways to avoid similar decisions
Design, Evaluation, and Analysis of Questionnaires for Survey Research, Second Edition is an excellent textbook for upper-undergraduate and graduate-level courses in methodology and research questionnaire planning, as well as an ideal resource for social scientists or survey researchers needing to design, evaluate, and analyze questionnaires.
Design, Evaluation, and Analysis of Questionnaires for Survey Research, Second Edition is an excellent textbook for upper-undergraduate and graduate-level courses in methodology and research questionnaire planning, as well as an ideal resource for social scientists or survey researchers needing to design, evaluate, and analyze questionnaires.Reflecting modern developments in the field of survey research, the Second Edition of Design, Evaluation, and Analysis of Questionnaires for Survey Research continues to provide cutting-edge analysis of the important decisions researchers make throughout the survey design process. The new edition covers the essential methodologies and statistical tools utilized to create reliable and accurate survey questionnaires, which unveils the relationship between individual question characteristics and overall question quality. Since the First Edition, the computer program Survey Quality Prediction (SQP) has
Analysis of Poverty Data by Small Area Estimation
Part of the Wiley in Survey Methodology series
A comprehensive guide to implementing SAE methods for poverty studies and poverty mapping.
There is an increasingly urgent demand for poverty and living conditions data, in relation to local areas and/or subpopulations. Policy makers and stakeholders need indicators and maps of poverty and living conditions in order to formulate and implement policies, (re)distribute resources, and measure the effect of local policy actions.
“Small Area Estimation (SAE)” plays a crucial role in producing statistically sound estimates for poverty mapping. This book offers a comprehensive source of information regarding the use of SAE methods adapted to these distinctive features of poverty data derived from surveys and administrative archives. The book covers the definition of poverty indicators, data collection and integration methods, the impact of sampling design, weighting and variance estimation, the issue of SAE modelling and robustness, the spatio-temporal modelling of poverty, and the SAE of the distribution function of income and inequalities. Examples of data analyses and applications are provided, and the book is supported by a website describing scripts written in SAS or R software, which accompany the majority of the presented methods.
Key features:
• Presents a comprehensive review of SAE methods for poverty mapping
• Demonstrates the applications of SAE methods using real-life case studies
“Analysis of Poverty Data by Small Area Estimation” offers an introduction to advanced techniques from both a practical and a methodological perspective and will prove an invaluable resource for researchers actively engaged in organizing, managing and conducting studies on poverty.
Implementation of Large-Scale Education Assessments
Part of the Wiley in Survey Methodology series
Presents a comprehensive treatment of issues related to the inception, design, implementation and reporting of large-scale education assessments.
In recent years many countries have decided to become involved in international educational assessments to allow them to ascertain the strengths and weaknesses of their student populations. Assessments such as the OECD's Programme for International Student Assessment (PISA), the IEA's Trends in Mathematics and Science Study (TIMSS) and Progress in International Reading Literacy (PIRLS) have provided opportunities for comparison between students of different countries on a common international scale.
This book is designed to give researchers, policy makers and practitioners a well-grounded knowledge in the design, implementation, analysis and reporting of international assessments. Readers will be able to gain a more detailed insight into the scientific principles employed in such studies allowing them to make better use of the results. The book will also give readers an understanding of the resources needed to undertake and improve the design of educational assessments in their own countries and regions.
“Implementation of Large-Scale Education Assessments”:
• Brings together the editors' extensive experience in creating, designing, implementing, analysing and reporting results on a wide range of assessments.
• Emphasizes methods for implementing international studies of student achievement and obtaining highquality data from cognitive tests and contextual questionnaires.
• Discusses the methods of sampling, weighting, and variance estimation that are commonly encountered in international large-scale assessments.
• Provides direction and stimulus for improving global educational assessment and student learning
• Is written by experts in the field, with an international perspective.
Survey researchers, market researchers and practitioners engaged in comparative projects will all benefit from the unparalleled breadth of knowledge and experience in large-scale educational assessments gathered in this one volume.
Big Data Meets Survey Science
A Collection of Innovative Methods
Part of the Wiley in Survey Methodology series
Offers a clear view of the utility and place for survey data within the broader Big Data ecosystem
This book presents a collection of snapshots from two sides of the Big Data perspective. It assembles an array of tangible tools, methods, and approaches that illustrate how Big Data sources and methods are being used in the survey and social sciences to improve official statistics and estimates for human populations. It also provides examples of how survey data are being used to evaluate and improve the quality of insights derived from Big Data.
Big Data Meets Survey Science: A Collection of Innovative Methods shows how survey data and Big Data are used together for the benefit of one or more sources of data, with numerous chapters providing consistent illustrations and examples of survey data enriching the evaluation of Big Data sources. Examples of how machine learning, data mining, and other data science techniques are inserted into virtually every stage of the survey lifecycle are presented. Topics covered include: Total Error Frameworks for Found Data, Performance and Sensitivities of Home Detection on Mobile Phone Data, Assessing Community Wellbeing Using Google Street View and Satellite Imagery, Using Surveys to Build and Assess RBS Religious Flag, and more. Presents groundbreaking survey methods being utilized today in the field of Big Data Explores how machine learning methods can be applied to the design, collection, and analysis of social science data Filled with examples and illustrations that show how survey data benefits Big Data evaluation Covers methods and applications used in combining Big Data with survey statistics Examines regulations as well as ethical and privacy issues
Big Data Meets Survey Science: A Collection of Innovative Methods is an excellent book for both the survey and social science communities as they learn to capitalize on this new revolution. It will also appeal to the broader data and computer science communities looking for new areas of application for emerging methods and data sources.
Experimental Methods in Survey Research
Techniques that Combine Random Sampling with Random Assignment
Part of the Wiley in Survey Methodology series
A thorough and comprehensive guide to the theoretical, practical, and methodological approaches used in survey experiments across disciplines such as political science, health sciences, sociology, economics, psychology, and marketing
This book explores and explains the broad range of experimental designs embedded in surveys that use both probability and non-probability samples. It approaches the usage of survey-based experiments with a Total Survey Error (TSE) perspective, which provides insight on the strengths and weaknesses of the techniques used.
“Experimental Methods in Survey Research: Techniques that Combine Random Sampling with Random Assignment” addresses experiments on within-unit coverage, reducing nonresponse, question and questionnaire design, minimizing interview measurement bias, using adaptive design, trend data, vignettes, the analysis of data from survey experiments, and other topics, across social, behavioral, and marketing science domains.
Each chapter begins with a description of the experimental method or application and its importance, followed by reference to relevant literature. At least one detailed original experimental case study then follows to illustrate the experimental method's deployment, implementation, and analysis from a TSE perspective. The chapters conclude with theoretical and practical implications on the usage of the experimental method addressed. In summary, this book:
• Fills a gap in the current literature by successfully combining the subjects of survey methodology and experimental methodology in an effort to maximize both internal validity and external validity
• Offers a wide range of types of experimentation in survey research with in-depth attention to their various methodologies and applications
• Is edited by internationally recognized experts in the field of survey research/methodology and in the usage of survey-based experimentation-featuring contributions from across a variety of disciplines in the social and behavioral sciences
• Presents advances in the field of survey experiments, as well as relevant references in each chapter for further study
• Includes more than 20 types of original experiments carried out within probability sample surveys
• Addresses myriad practical and operational aspects for designing, implementing, and analyzing survey-based experiments by using a Total Survey Error perspective to address the strengths and weaknesses of each experimental technique and method
“Experimental Methods in Survey Research: Techniques that Combine Random Sampling with Random Assignment” is an ideal reference for survey researchers and practitioners in areas such political science, health sciences, sociology, economics, psychology, public policy, data collection, data science, and marketing. It is also a very useful textbook for graduate-level courses on survey experiments and survey methodology.
Cognitive Interviewing Methodology
Part of the Wiley in Survey Methodology series
AN INTERDISCIPLINARY PERSPECTIVE TO THE EVOLUTION OF THEORY AND METHODOLOGY WITHIN COGNITIVE INTERVIEW PROCESSES
Providing a comprehensive approach to cognitive interviewing in the field of survey methodology, “Cognitive Interviewing Methodology” delivers a clear guide that draws upon modern, cutting-edge research from a variety of fields.
Each chapter begins by summarizing the prevailing paradigms that currently dominate the field of cognitive interviewing. Then underlying theoretical foundations are presented, which supplies readers with the necessary background to understand newly-evolving techniques in the field. The theories lead into developed and practiced methods by leading practitioners, researchers, and/or academics. Finally, the edited guide lays out the limitations of cognitive interviewing studies and explores the benefits of cognitive interviewing with other methodological approaches. With a primary focus on question evaluation, Cognitive Interviewing Methodology also includes:
• Step-by-step procedures for conducting cognitive interviewing studies, which includes the various aspects of data collection, questionnaire design, and data interpretation
• Newly developed tools to benefit cognitive interviewing studies as well as the field of question evaluation, such as Q-Notes, a data entry and analysis software application, and Q-Bank, an online resource that houses question evaluation studies
• A unique method for questionnaire designers, survey managers, and data users to analyze, present, and document survey data results from a cognitive interviewing study
An excellent reference for survey researchers and practitioners in the social sciences who utilize cognitive interviewing techniques in their everyday work, “Cognitive Interviewing Methodology” is also a useful supplement for courses on survey methods at the upper-undergraduate and graduate-level.
Designing and Conducting Business Surveys
Part of the Wiley in Survey Methodology series
“Designing and Conducting Business Surveys” provides a coherent overview of the business survey process, from start to finish. It uniquely integrates an understanding of how businesses operate, a total survey error approach to data quality that focuses specifically on business surveys, and sound project management principles. The book brings together what is currently known about planning, designing, and conducting business surveys, with producing and disseminating statistics or other research results from the collected data. This knowledge draws upon a variety of disciplines such as survey methodology, organizational sciences, sociology, psychology, and statistical methods. The contents of the book formulate a comprehensive guide to scholarly material previously dispersed among books, journal articles, and conference papers.
This book provides guidelines that will help the reader make educated trade-off decisions that minimize survey errors, costs, and response burden, while being attentive to survey data quality. Major topics include:
• Determining the survey content, considering user needs, the business context, and total survey quality
• Planning the survey as a project
• Sampling frames, procedures, and methods
• Questionnaire design and testing for self-administered paper, web, and mixed-mode surveys
• Survey communication design to obtain responses and facilitate the business response process
• Conducting and managing the survey using paradata and project management tools
• Data processing, including capture, editing, and imputation, and dissemination of statistical outputs
Designing and Conducting Business Surveys is an indispensable resource for anyone involved in designing and/or conducting business or organizational surveys at statistical institutes, central banks, survey organizations, etc., producing statistics or other research results from business surveys at universities, research organizations, etc., or using data produced from business surveys. The book also lays a foundation for new areas of research in business surveys.
Sampling and Estimation From Finite Populations
Part of the Wiley in Survey Methodology series
A much-needed reference on survey sampling and its applications that presents the latest advances in the field.
Seeking to show that sampling theory is a living discipline with a very broad scope, this book examines the modern development of the theory of survey sampling and the foundations of survey sampling. It offers readers a critical approach to the subject and discusses putting theory into practice. It also explores the treatment of non-sampling errors featuring a range of topics from the problems of coverage to the treatment of non-response. In addition, the book includes real examples, applications, and a large set of exercises with solutions.
“Sampling and Estimation from Finite Populations” begins with a look at the history of survey sampling. It then offers chapters on: population, sample, and estimation; simple and systematic designs; stratification; sampling with unequal probabilities; balanced sampling; cluster and two-stage sampling; and other topics on sampling, such as spatial sampling, coordination in repeated surveys, and multiple survey frames. The book also includes sections on: post-stratification and calibration on marginal totals; calibration estimation; estimation of complex parameters; variance estimation by linearization; and much more.
• Provides an up-to-date review of the theory of sampling
• Discusses the foundation of inference in survey sampling, in particular, the model-based and design-based frameworks
• Reviews the problems of application of the theory into practice
• Also deals with the treatment of non sampling errors
“Sampling and Estimation from Finite Populations” is an excellent book for methodologists and researchers in survey agencies and advanced undergraduate and graduate students in social science, statistics, and survey courses.
Nonresponse in Household Interview Surveys
Part of the Wiley in Survey Methodology series
A comprehensive framework for both reduction of nonresponse and post survey adjustment for nonresponse.
This book provides guidance and support for survey statisticians who need to develop models for postsurvey adjustment for nonresponse, and for survey designers and practitioners attempting to reduce unit nonresponse in household interview surveys. It presents the results of an eight-year research program that has assembled an unprecedented data set on respondents and nonrespondents from several major household surveys in the United States.
Within a comprehensive conceptual framework of influences on nonresponse, the authors investigate every aspect of survey cooperation, from the influences of household characteristics and social and environmental factors to the interaction between interviewers and householders and the design of the survey itself.
“Nonresponse in Household Interview Surveys”:
* Provides a theoretical framework for understanding and studying household survey nonresponse
* Empirically explores the individual and combined influences of several factors on nonresponse
* Presents chapter introductions, summaries, and discussions on practical implications to clarify concepts and theories
* Supplies extensive references for further study and inquiry
“Nonresponse in Household Interview Surveys” is an important resource for professionals and students in survey methodology/research methods as well as those who use survey methods or data in business, government, and academia. It addresses issues critical to dealing with nonresponse in surveys, reducing nonresponse during survey data collection, and constructing statistical compensations for the effects of nonresponse on key survey estimates.
Small Area Estimation
Part of the Wiley in Survey Methodology series
Written by two experts in the field, Small Area Estimation, Second Edition provides a comprehensive and up-to-date account of the methods and theory of small area estimation (SAE), particularly indirect estimation based on explicit small area linking models. The model-based approach to small area estimation offers several advantages including increased precision, the derivation of "optimal" estimates and associated measures of variability under an assumed model, and the validation of models from the sample data.
Emphasizing real data throughout, the Second Edition maintains a self-contained account of crucial theoretical and methodological developments in the field of SAE. The new edition provides extensive accounts of new and updated research, which often involves complex theory to handle model misspecifications and other complexities. Including information on survey design issues and traditional methods employing indirect estimates based on implicit linking models, Small Area Estimation, Second Edition also features:
• Additional sections describing the use of R code data sets for readers to use when replicating applications
• Numerous examples of SAE applications throughout each chapter, including recent applications in U.S. Federal programs
• New topical coverage on extended design issues, synthetic estimation, further refinements and solutions to the Fay-Herriot area level model, basic unit level models, and spatial and time series models
• A discussion of the advantages and limitations of various SAE methods for model selection from data as well as comparisons of estimates derived from models to reliable values obtained from external sources, such as previous census or administrative data
Small Area Estimation, Second Edition is an excellent reference for practicing statisticians and survey methodologists as well as practitioners interested in learning SAE methods. The Second Edition is also an ideal textbook for graduate-level courses in SAE and reliable small area statistics.
Administrative Records for Survey Methodology
Part of the Wiley in Survey Methodology series
Addresses the international use of administrative records for large-scale surveys, censuses, and other statistical purposes.
“Administrative Records for Survey Methodology” is a comprehensive guide to improving the quality, cost-efficiency, and interpretability of surveys and censuses using administrative data research. Contributions from a team of internationally-recognized experts provide practical approaches for integrating administrative data in statistical surveys, and discuss the methodological issues-including concerns of privacy, confidentiality, and legality-involved in collecting and analyzing administrative records. Numerous real-world examples highlight technological and statistical innovations, helping readers gain a better understanding of both fundamental methods and advanced techniques for controlling data quality reducing total survey error.
Divided into four sections, the first describes the basics of administrative records research and addresses disclosure limitation and confidentiality protection in linked data. Section two focuses on data quality and linking methodology, covering topics such as quality evaluation, measuring and controlling for non-consent bias, and cleaning and using administrative lists. The third section examines the use of administrative records in surveys and includes case studies of the Swedish register-based census and the administrative records applications used for the US 2020 Census. The book's final section discusses combining administrative and survey data to improve income measurement, enhancing health surveys with data linkage, and other uses of administrative data in evidence-based policymaking. This state-of-the-art resource:
• Discusses important administrative data issues and suggests how administrative data can be integrated with more traditional surveys
• Describes practical uses of administrative records for evidence-driven decisions in both public and private sectors
• Emphasizes using interdisciplinary methodology and linking administrative records with other data sources
• Explores techniques to leverage administrative data to improve the survey frame, reduce nonresponse follow-up, assess coverage error, measure linkage non-consent bias, and perform small area estimation.
“Administrative Records for Survey Methodology” is an indispensable reference and guide for statistical researchers and methodologists in academia, industry, and government, particularly census bureaus and national statistical offices, and an ideal supplemental text for undergraduate and graduate courses in data science, survey methodology, data collection, and data analysis methods.