Total survey error in practice

書誌事項

Total survey error in practice

edited by Paul P. Biemer ... [et al.]

(Wiley series in survey methodology)

Wiley, c2017

  • : [hbk.]

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注記

Includes bibliographical references and index

収録内容

  • The roots and evolution of the total survey error concept / Lars E. Lyberg and Diana Maria Stukel
  • Total Twitter error : decomposing public opinion measurement on twitter from a total survey error perspective / Yuli Patrick Hsieh and Joe Murphy
  • Big data : a survey research perspective / Reg Baker
  • The role of statistical disclosure limitation in total survey error / Alan F. Karr
  • The undercoverage-nonresponse tradeoff / Stephanie Eckman and Frauke Kreuter
  • Mixing modes : tradeoffs among coverage, nonresponse, and measurement error / Roger Tourangeau
  • Mobile web surveys : a total survey error perspective / Mick P. Couper, Christopher Antoun, and Aigul Mavletova
  • The effects of a mid-data collection change in financial incentives on total survey error in the national survey of family growth : results from a randomized experiment / James Wagner ... [et al.]
  • A total survey error perspective on surveys in multinational, multiregional, and multicultural contexts / Beth-Ellen Pennell ... [et al.]
  • Smartphone participation in web surveys : choosing between the potential for coverage, nonresponse, and measurement error / Gregg Peterson ... [et al.]
  • Survey research and the quality of survey data among ethnic minorities / Joost Kappelhof
  • Measurement error in survey operations management : detection, quantification, visualization, and reduction / Brad Edwards, Aaron Maitland, and Sue Connor
  • Total survey error for longitudinal surveys / Peter Lynn and Peter J. Lugtig
  • Text interviews on mobile devices / Frederick G. Conrad ... [et al.]
  • Quantifying measurement errors in partially edited business survey data / Thomas Laitila ... [et al.]
  • Estimating error rates in an administrative register and survey questions using a latent class model / Daniel L. Oberski
  • Aspire : an approach for evaluating and reducing the total error in statistical products with application to registers and the national accounts / Paul P. Biemer ... [et al.]
  • Classification error in crime victimization surveys : a markov latent class analysis / Marcus E. Berzofsky and Paul P. Biemer
  • Using doorstep concerns data to evaluate and correct for nonresponse error in a longitudinal survey / Ting Yan
  • Total survey error assessment for sociodemographic subgroups in the 2012 U.S. national immunization survey / Kirk M. Wolter ... [et al.]
  • Establishing infrastructure for the use of big data to understand total survey error : examples from four survey research organizations: overview / Brady T. West
  • Part 1. Big data infrastructure at the institute for employment research (IAB) / Antje Kirchner, Daniela Hochfellner, and Stefan Bender
  • Part 2. Using administrative records data at the U.S. Census bureau : lessons learned from two research projects evaluating survey data / Elizabeth M. Nichols, Mary H. Mulry, and Jennifer Hunter Childs
  • Part 3. Statistics New Zealand's approach to making use of alternative data sources in a new era of integrated data / Anders Holmberg and Christine Bycroft
  • Analytic error as an important component of total survey error : results from a meta-analysis / Brady T. West, Joseph W. Sakshaug, and Yumi Kim
  • Mixed-mode research : issues in design and analysis / Joop Hox, Edith de Leeuw, and Thomas Klausch
  • The effect of nonresponse and measurement error on wage regression across survey modes : a validation study / Antje Kirchner and Barbara Felderer
  • Errors in linking survey and administrative data / Joseph W. Sakshaug and Manfred Antoni

内容説明・目次

内容説明

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.

目次

Notes on Contributors xix Preface xxv Section 1 The Concept of TSE and the TSE Paradigm 1 1 The Roots and Evolution of the Total Survey Error Concept 3 Lars E. Lyberg and Diana Maria Stukel 1.1 Introduction and Historical Backdrop 3 1.2 Specific Error Sources and Their Control or Evaluation 5 1.3 Survey Models and Total Survey Design 10 1.4 The Advent of More Systematic Approaches Toward Survey Quality 12 1.5 What the Future Will Bring 16 References 18 2 Total Twitter Error: Decomposing Public Opinion Measurement on Twitter from a Total Survey Error Perspective 23 Yuli Patrick Hsieh and Joe Murphy 2.1 Introduction 23 2.2 Social Media: An Evolving Online Public Sphere 25 2.3 Components of Twitter Error 27 2.4 Studying Public Opinion on the Twittersphere and the Potential Error Sources of Twitter Data: Two Case Studies 31 2.5 Discussion 40 2.6 Conclusion 42 References 43 3 Big Data: A Survey Research Perspective 47 Reg Baker 3.1 Introduction 47 3.2 Definitions 48 3.3 The Analytic Challenge: From Database Marketing to Big Data and Data Science 56 3.4 Assessing Data Quality 58 3.5 Applications in Market, Opinion, and Social Research 59 3.6 The Ethics of Research Using Big Data 62 3.7 The Future of Surveys in a Data-Rich Environment 62 References 65 4 The Role of Statistical Disclosure Limitation in Total Survey Error 71 Alan F. Karr 4.1 Introduction 71 4.2 Primer on SDL 72 4.3 TSE-Aware SDL 75 4.4 Edit-Respecting SDL 79 4.5 SDL-Aware TSE 83 4.6 Full Unification of Edit, Imputation, and SDL 84 4.7 "Big Data" Issues 87 4.8 Conclusion 89 Acknowledgments 91 References 92 Section 2 Implications for Survey Design 95 5 The Undercoverage-Nonresponse Tradeoff 97 Stephanie Eckman and Frauke Kreuter 5.1 Introduction 97 5.2 Examples of the Tradeoff 98 5.3 Simple Demonstration of the Tradeoff 99 5.4 Coverage and Response Propensities and Bias 100 5.5 Simulation Study of Rates and Bias 102 5.6 Costs 110 5.7 Lessons for Survey Practice 111 References 112 6 Mixing Modes: Tradeoffs Among Coverage, Nonresponse, and Measurement Error 115 Roger Tourangeau 6.1 Introduction 115 6.2 The Effect of Offering a Choice of Modes 118 6.3 Getting People to Respond Online 119 6.4 Sequencing Different Modes of Data Collection 120 6.5 Separating the Effects of Mode on Selection and Reporting 122 6.6 Maximizing Comparability Versus Minimizing Error 127 6.7 Conclusions 129 References 130 7 Mobile Web Surveys: A Total Survey Error Perspective 133 Mick P. Couper, Christopher Antoun, and Aigul Mavletova 7.1 Introduction 133 7.2 Coverage 135 7.3 Nonresponse 137 7.4 Measurement Error 142 7.5 Links Between Different Error Sources 148 7.6 The Future of Mobile Web Surveys 149 References 150 8 The Effects of a Mid-Data Collection Change in Financial Incentives on Total Survey Error in the National Survey of Family Growth: Results from a Randomized Experiment 155 James Wagner, Brady T. West, Heidi Guyer, Paul Burton, Jennifer Kelley, Mick P. Couper, and William D. Mosher 8.1 Introduction 155 8.2 Literature Review: Incentives in Face-to-Face Surveys 156 8.3 Data and Methods 159 8.4 Results 163 8.5 Conclusion 173 References 175 9 A Total Survey Error Perspective on Surveys in Multinational, Multiregional, and Multicultural Contexts 179 Beth-Ellen Pennell, Kristen Cibelli Hibben, Lars E. Lyberg, Peter Ph. Mohler, and Gelaye Worku 9.1 Introduction 179 9.2 TSE in Multinational, Multiregional, and Multicultural Surveys 180 9.3 Challenges Related to Representation and Measurement Error Components in Comparative Surveys 184 9.4 QA and QC in 3MC Surveys 192 References 196 10 Smartphone Participation in Web Surveys: Choosing Between the Potential for Coverage, Nonresponse, and Measurement Error 203 Gregg Peterson, Jamie Griffin, John LaFrance, and JiaoJiao Li 10.1 Introduction 203 10.2 Prevalence of Smartphone Participation in Web Surveys 206 10.3 Smartphone Participation Choices 209 10.4 Instrument Design Choices 212 10.5 Device and Design Treatment Choices 216 10.6 Conclusion 218 10.7 Future Challenges and Research Needs 219 Appendix 10.A: Data Sources 220 Appendix 10.B: Smartphone Prevalence in Web Surveys 221 Appendix 10.C: Screen Captures from Peterson et al. (2013) Experiment 225 Appendix 10.D: Survey Questions Used in the Analysis of the Peterson et al. (2013) Experiment 229 References 231 11 Survey Research and the Quality of Survey Data Among Ethnic Minorities 235 Joost Kappelhof 11.1 Introduction 235 11.2 On the Use of the Terms Ethnicity and Ethnic Minorities 236 11.3 On the Representation of Ethnic Minorities in Surveys 237 Ethnic Minorities 241 11.4 Measurement Issues 242 11.5 Comparability, Timeliness, and Cost Concerns 244 11.6 Conclusion 247 References 248 Section 3 Data Collection and Data Processing Applications 253 12 Measurement Error in Survey Operations Management: Detection, Quantification, Visualization, and Reduction 255 Brad Edwards, Aaron Maitland, and Sue Connor 12.1 TSE Background on Survey Operations 256 12.2 Better and Better: Using Behavior Coding (CARIcode) and Paradata to Evaluate and Improve Question (Specification) Error and Interviewer Error 257 12.3 Field-Centered Design: Mobile App for Rapid Reporting and Management 261 12.4 Faster and Cheaper: Detecting Falsification With GIS Tools 265 12.5 Putting It All Together: Field Supervisor Dashboards 268 12.6 Discussion 273 References 275 13 Total Survey Error for Longitudinal Surveys 279 Peter Lynn and Peter J. Lugtig 13.1 Introduction 279 13.2 Distinctive Aspects of Longitudinal Surveys 280 13.3 TSE Components in Longitudinal Surveys 281 13.4 Design of Longitudinal Surveys from a TSE Perspective 285 13.5 Examples of Tradeoffs in Three Longitudinal Surveys 290 13.6 Discussion 294 References 295 14 Text Interviews on Mobile Devices 299 Frederick G. Conrad, Michael F. Schober, Christopher Antoun, Andrew L. Hupp, and H. Yanna Yan 14.1 Texting as a Way of Interacting 300 14.2 Contacting and Inviting Potential Respondents through Text 303 14.3 Texting as an Interview Mode 303 14.4 Costs and Efficiency of Text Interviewing 312 14.5 Discussion 314 References 315 15 Quantifying Measurement Errors in Partially Edited Business Survey Data 319 Thomas Laitila, Karin Lindgren, Anders Norberg, and Can Tongur 15.1 Introduction 319 15.2 Selective Editing 320 15.3 Effects of Errors Remaining After SE 325 15.4 Case Study: Foreign Trade in Goods Within the European Union 328 15.5 Editing Big Data 334 15.6 Conclusions 335 References 335 Section 4 Evaluation and Improvement 339 16 Estimating Error Rates in an Administrative Register and Survey Questions Using a Latent Class Model 341 Daniel L. Oberski 16.1 Introduction 341 16.2 Administrative and Survey Measures of Neighborhood 342 16.3 A Latent Class Model for Neighborhood of Residence 345 16.4 Results 348 Appendix 16.A: Program Input and Data 355 Acknowledgments 357 References 357 17 ASPIRE: An Approach for Evaluating and Reducing the Total Error in Statistical Products with Application to Registers and the National Accounts 359 Paul P. Biemer, Dennis Trewin, Heather Bergdahl, and Yingfu Xie 17.1 Introduction and Background 359 17.2 Overview of ASPIRE 360 17.3 The ASPIRE Model 362 17.4 Evaluation of Registers 367 17.5 National Accounts 371 17.6 A Sensitivity Analysis of GDP Error Sources 376 17.7 Concluding Remarks 379 Appendix 17.A: Accuracy Dimension Checklist 381 References 384 18 Classification Error in Crime Victimization Surveys: A Markov Latent Class Analysis 387 Marcus E. Berzofsky and Paul P. Biemer 18.1 Introduction 387 18.2 Background 389 18.3 Analytic Approach 392 18.4 Model Selection 396 18.5 Results 399 18.6 Discussion and Summary of Findings 404 18.7 Conclusions 407 Appendix 18.A: Derivation of the Composite False-Negative Rate 407 Appendix 18.B: Derivation of the Lower Bound for False-Negative Rates from a Composite Measure 408 Appendix 18.C: Examples of Latent GOLD Syntax 408 References 410 19 Using Doorstep Concerns Data to Evaluate and Correct for Nonresponse Error in a Longitudinal Survey 413 Ting Yan 19.1 Introduction 413 19.2 Data and Methods 416 19.3 Results 418 19.4 Discussion 428 Acknowledgment 430 References 430 20 Total Survey Error Assessment for Sociodemographic Subgroups in the 2012 U.S. National Immunization Survey 433 Kirk M. Wolter, Vicki J. Pineau, Benjamin Skalland, Wei Zeng, James A. Singleton, Meena Khare, Zhen Zhao, David Yankey, and Philip J. Smith 20.1 Introduction 433 20.2 TSE Model Framework 434 20.3 Overview of the National Immunization Survey 437 20.4 National Immunization Survey: Inputs for TSE Model 440 20.5 National Immunization Survey TSE Analysis 445 20.6 Summary 452 References 453 21 Establishing Infrastructure for the Use of Big Data to Understand Total Survey Error: Examples from Four Survey Research Organizations Overview 457 Brady T. West Part 1 Big Data Infrastructure at the Institute for Employment Research (IAB) 458 Antje Kirchner, Daniela Hochfellner, Stefan Bender Acknowledgments 464 References 464 Part 2 Using Administrative Records Data at the U.S. Census Bureau: Lessons Learned from Two Research Projects Evaluating Survey Data 467 Elizabeth M. Nichols, Mary H. Mulry, and Jennifer Hunter Childs Acknowledgments and Disclaimers 472 References 472 Part 3 Statistics New Zealand's Approach to Making Use of Alternative Data Sources in a New Era of Integrated Data 474 Anders Holmberg and Christine Bycroft References 478 Part 4 Big Data Serving Survey Research: Experiences at the University of Michigan Survey Research Center 478 Grant Benson and Frost Hubbard Acknowledgments and Disclaimers 484 References 484 Section 5 Estimation and Analysis 487 22 Analytic Error as an Important Component of Total Survey Error: Results from a Meta-Analysis 489 Brady T. West, Joseph W. Sakshaug, and Yumi Kim 22.1 Overview 489 22.2 Analytic Error as a Component of TSE 490 22.3 Appropriate Analytic Methods for Survey Data 492 22.4 Methods 495 22.5 Results 497 22.6 Discussion 505 Acknowledgments 508 References 508 23 Mixed-Mode Research: Issues in Design and Analysis 511 Joop Hox, Edith de Leeuw, and Thomas Klausch 23.1 Introduction 511 23.2 Designing Mixed-Mode Surveys 512 23.3 Literature Overview 514 23.4 Diagnosing Sources of Error in Mixed-Mode Surveys 516 23.5 Adjusting for Mode Measurement Effects 523 23.6 Conclusion 527 References 528 24 The Effect of Nonresponse and Measurement Error on Wage Regression across Survey Modes: A Validation Study 531 Antje Kirchner and Barbara Felderer 24.1 Introduction 531 24.2 Nonresponse and Response Bias in Survey Statistics 532 24.3 Data and Methods 534 24.4 Results 541 24.5 Summary and Conclusion 546 Acknowledgments 547 Appendix 24.A 548 Appendix 24.B 549 References 554 25 Errors in Linking Survey and Administrative Data 557 Joseph W. Sakshaug and Manfred Antoni 25.1 Introduction 557 25.2 Conceptual Framework of Linkage and Error Sources 559 25.3 Errors Due to Linkage Consent 561 25.4 Erroneous Linkage with Unique Identifiers 565 25.5 Erroneous Linkage with Nonunique Identifiers 567 25.6 Applications and Practical Guidance 568 25.7 Conclusions and Take-Home Points 571 References 571 Index 575

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