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Interviewer Effects from a Total Survey Error Perspective presents
a comprehensive collection of state-of-the-art research on
interviewer-administered survey data collection. Interviewers play
an essential role in the collection of the high-quality survey data
used to learn about our society and improve the human condition.
Although many surveys are conducted using self-administered modes,
interviewer-administered modes continue to be optimal for surveys
that require high levels of participation, include
difficult-to-survey populations, and collect biophysical data.
Survey interviewing is complex, multifaceted, and challenging.
Interviewers are responsible for locating sampled units, contacting
sampled individuals and convincing them to cooperate, asking
questions on a variety of topics, collecting other kinds of data,
and providing data about respondents and the interview environment.
Careful attention to the methodology that underlies survey
interviewing is essential for interviewer-administered data
collections to succeed. In 2019, survey methodologists, survey
practitioners, and survey operations specialists participated in an
international workshop at the University of Nebraska-Lincoln to
identify best practices for surveys employing interviewers and
outline an agenda for future methodological research. This book
features 23 chapters on survey interviewing by these worldwide
leaders in the theory and practice of survey interviewing. Chapters
include: The legacy of Dr. Charles F. Cannell's groundbreaking
research on training survey interviewers and the theory of survey
interviewing Best practices for training survey interviewers
Interviewer management and monitoring during data collection The
complex effects of interviewers on survey nonresponse Collecting
survey measures and survey paradata in different modes Designing
studies to estimate and evaluate interviewer effects Best practices
for analyzing interviewer effects Key gaps in the research
literature, including an agenda for future methodological research
Chapter appendices available to download from
https://digitalcommons.unl.edu/sociw/ Written for managers of
survey interviewers, survey methodologists, and students interested
in the survey data collection process, this unique reference uses
the Total Survey Error framework to examine optimal approaches to
survey interviewing, presenting state-of-the-art methodological
research on all stages of the survey process involving
interviewers. Acknowledging the important history of survey
interviewing while looking to the future, this one-of-a-kind
reference provides researchers and practitioners with a roadmap for
maximizing data quality in interviewer-administered surveys.
Big Data and Social Science: Data Science Methods and Tools for
Research and Practice, Second Edition shows how to apply data
science to real-world problems, covering all stages of a
data-intensive social science or policy project. Prominent leaders
in the social sciences, statistics, and computer science as well as
the field of data science provide a unique perspective on how to
apply modern social science research principles and current
analytical and computational tools. The text teaches you how to
identify and collect appropriate data, apply data science methods
and tools to the data, and recognize and respond to data errors,
biases, and limitations. Features: Takes an accessible, hands-on
approach to handling new types of data in the social sciences
Presents the key data science tools in a non-intimidating way to
both social and data scientists while keeping the focus on research
questions and purposes Illustrates social science and data science
principles through real-world problems Links computer science
concepts to practical social science research Promotes good
scientific practice Provides freely available workbooks with data,
code, and practical programming exercises, through Binder and
GitHub New to the Second Edition: Increased use of examples from
different areas of social sciences New chapter on dealing with Bias
and Fairness in Machine Learning models Expanded chapters focusing
on Machine Learning and Text Analysis Revamped hands-on Jupyter
notebooks to reinforce concepts covered in each chapter This
classroom-tested book fills a major gap in graduate- and
professional-level data science and social science education. It
can be used to train a new generation of social data scientists to
tackle real-world problems and improve the skills and competencies
of applied social scientists and public policy practitioners. It
empowers you to use the massive and rapidly growing amounts of
available data to interpret economic and social activities in a
scientific and rigorous manner.
Interviewer Effects from a Total Survey Error Perspective presents
a comprehensive collection of state-of-the-art research on
interviewer-administered survey data collection. Interviewers play
an essential role in the collection of the high-quality survey data
used to learn about our society and improve the human condition.
Although many surveys are conducted using self-administered modes,
interviewer-administered modes continue to be optimal for surveys
that require high levels of participation, include
difficult-to-survey populations, and collect biophysical data.
Survey interviewing is complex, multifaceted, and challenging.
Interviewers are responsible for locating sampled units, contacting
sampled individuals and convincing them to cooperate, asking
questions on a variety of topics, collecting other kinds of data,
and providing data about respondents and the interview environment.
Careful attention to the methodology that underlies survey
interviewing is essential for interviewer-administered data
collections to succeed. In 2019, survey methodologists, survey
practitioners, and survey operations specialists participated in an
international workshop at the University of Nebraska-Lincoln to
identify best practices for surveys employing interviewers and
outline an agenda for future methodological research. This book
features 23 chapters on survey interviewing by these worldwide
leaders in the theory and practice of survey interviewing. Chapters
include: The legacy of Dr. Charles F. Cannell's groundbreaking
research on training survey interviewers and the theory of survey
interviewing Best practices for training survey interviewers
Interviewer management and monitoring during data collection The
complex effects of interviewers on survey nonresponse Collecting
survey measures and survey paradata in different modes Designing
studies to estimate and evaluate interviewer effects Best practices
for analyzing interviewer effects Key gaps in the research
literature, including an agenda for future methodological research
Chapter appendices available to download from
https://digitalcommons.unl.edu/sociw/ Written for managers of
survey interviewers, survey methodologists, and students interested
in the survey data collection process, this unique reference uses
the Total Survey Error framework to examine optimal approaches to
survey interviewing, presenting state-of-the-art methodological
research on all stages of the survey process involving
interviewers. Acknowledging the important history of survey
interviewing while looking to the future, this one-of-a-kind
reference provides researchers and practitioners with a roadmap for
maximizing data quality in interviewer-administered surveys.
The goal of this book is to put an array of tools at the fingertips
of students, practitioners, and researchers by explaining
approaches long used by survey statisticians, illustrating how
existing software can be used to solve survey problems, and
developing some specialized software where needed. This volume
serves at least three audiences: (1) students of applied sampling
techniques; 2) practicing survey statisticians applying concepts
learned in theoretical or applied sampling courses; and (3) social
scientists and other survey practitioners who design, select, and
weight survey samples. The text thoroughly covers fundamental
aspects of survey sampling, such as sample size calculation (with
examples for both single- and multi-stage sample design) and weight
computation, accompanied by software examples to facilitate
implementation. Features include step-by-step instructions for
calculating survey weights, extensive real-world examples and
applications, and representative programming code in R, SAS, and
other packages. Since the publication of the first edition in 2013,
there have been important developments in making inferences from
nonprobability samples, in address-based sampling (ABS), and in the
application of machine learning techniques for survey estimation.
New to this revised and expanded edition: * Details on new
functions in the PracTools package * Additional machine learning
methods to form weighting classes * New coverage of nonlinear
optimization algorithms for sample allocation * Reflecting effects
of multiple weighting steps (nonresponse and calibration) on
standard errors * A new chapter on nonprobability sampling *
Additional examples, exercises, and updated references throughout
Richard Valliant, PhD, is Research Professor Emeritus at the
Institute for Social Research at the University of Michigan and at
the Joint Program in Survey Methodology at the University of
Maryland. He is a Fellow of the American Statistical Association,
an elected member of the International Statistical Institute, and
has been an Associate Editor of the Journal of the American
Statistical Association, Journal of Official Statistics, and Survey
Methodology. Jill A. Dever, PhD, is Senior Research Statistician at
RTI International in Washington, DC. She is a Fellow of the
American Statistical Association, Associate Editor for Survey
Methodology and the Journal of Official Statistics, and an
Assistant Research Professor in the Joint Program in Survey
Methodology at the University of Maryland. She has served on
several panels for the National Academy of Sciences and as a task
force member for the American Association of Public Opinion
Research's report on nonprobability sampling. Frauke Kreuter, PhD,
is Professor and Director of the Joint Program in Survey
Methodology at the University of Maryland, Professor of Statistics
and Methodology at the University of Mannheim, and Head of the
Statistical Methods Research Department at the Institute for
Employment Research (IAB) in Nurnberg, Germany. She is a Fellow of
the American Statistical Association and has been Associate Editor
of the Journal of the Royal Statistical Society, Journal of
Official Statistics, Sociological Methods and Research, Survey
Research Methods, Public Opinion Quarterly, American Sociological
Review, and the Stata Journal. She is founder of the International
Program for Survey and Data Science and co-founder of the Coleridge
Initiative.
Big Data and Social Science: Data Science Methods and Tools for
Research and Practice, Second Edition shows how to apply data
science to real-world problems, covering all stages of a
data-intensive social science or policy project. Prominent leaders
in the social sciences, statistics, and computer science as well as
the field of data science provide a unique perspective on how to
apply modern social science research principles and current
analytical and computational tools. The text teaches you how to
identify and collect appropriate data, apply data science methods
and tools to the data, and recognize and respond to data errors,
biases, and limitations. Features: Takes an accessible, hands-on
approach to handling new types of data in the social sciences
Presents the key data science tools in a non-intimidating way to
both social and data scientists while keeping the focus on research
questions and purposes Illustrates social science and data science
principles through real-world problems Links computer science
concepts to practical social science research Promotes good
scientific practice Provides freely available workbooks with data,
code, and practical programming exercises, through Binder and
GitHub New to the Second Edition: Increased use of examples from
different areas of social sciences New chapter on dealing with Bias
and Fairness in Machine Learning models Expanded chapters focusing
on Machine Learning and Text Analysis Revamped hands-on Jupyter
notebooks to reinforce concepts covered in each chapter This
classroom-tested book fills a major gap in graduate- and
professional-level data science and social science education. It
can be used to train a new generation of social data scientists to
tackle real-world problems and improve the skills and competencies
of applied social scientists and public policy practitioners. It
empowers you to use the massive and rapidly growing amounts of
available data to interpret economic and social activities in a
scientific and rigorous manner.
The goal of this book is to put an array of tools at the fingertips
of students, practitioners, and researchers by explaining
approaches long used by survey statisticians, illustrating how
existing software can be used to solve survey problems, and
developing some specialized software where needed. This volume
serves at least three audiences: (1) students of applied sampling
techniques; 2) practicing survey statisticians applying concepts
learned in theoretical or applied sampling courses; and (3) social
scientists and other survey practitioners who design, select, and
weight survey samples. The text thoroughly covers fundamental
aspects of survey sampling, such as sample size calculation (with
examples for both single- and multi-stage sample design) and weight
computation, accompanied by software examples to facilitate
implementation. Features include step-by-step instructions for
calculating survey weights, extensive real-world examples and
applications, and representative programming code in R, SAS, and
other packages. Since the publication of the first edition in 2013,
there have been important developments in making inferences from
nonprobability samples, in address-based sampling (ABS), and in the
application of machine learning techniques for survey estimation.
New to this revised and expanded edition: * Details on new
functions in the PracTools package * Additional machine learning
methods to form weighting classes * New coverage of nonlinear
optimization algorithms for sample allocation * Reflecting effects
of multiple weighting steps (nonresponse and calibration) on
standard errors * A new chapter on nonprobability sampling *
Additional examples, exercises, and updated references throughout
Richard Valliant, PhD, is Research Professor Emeritus at the
Institute for Social Research at the University of Michigan and at
the Joint Program in Survey Methodology at the University of
Maryland. He is a Fellow of the American Statistical Association,
an elected member of the International Statistical Institute, and
has been an Associate Editor of the Journal of the American
Statistical Association, Journal of Official Statistics, and Survey
Methodology. Jill A. Dever, PhD, is Senior Research Statistician at
RTI International in Washington, DC. She is a Fellow of the
American Statistical Association, Associate Editor for Survey
Methodology and the Journal of Official Statistics, and an
Assistant Research Professor in the Joint Program in Survey
Methodology at the University of Maryland. She has served on
several panels for the National Academy of Sciences and as a task
force member for the American Association of Public Opinion
Research's report on nonprobability sampling. Frauke Kreuter, PhD,
is Professor and Director of the Joint Program in Survey
Methodology at the University of Maryland, Professor of Statistics
and Methodology at the University of Mannheim, and Head of the
Statistical Methods Research Department at the Institute for
Employment Research (IAB) in Nurnberg, Germany. She is a Fellow of
the American Statistical Association and has been Associate Editor
of the Journal of the Royal Statistical Society, Journal of
Official Statistics, Sociological Methods and Research, Survey
Research Methods, Public Opinion Quarterly, American Sociological
Review, and the Stata Journal. She is founder of the International
Program for Survey and Data Science and co-founder of the Coleridge
Initiative.
In regelmassigen Abstanden - besonders oft zu Wahlkampfzeiten - hat
die Diskussion uber innere Sicherheit auf Bundes- und Landesebene
Hochkonjunktur. Dabei spielen Unsicherheit und Kriminalitatsfurcht
eine zentrale Rolle. Meist wird das Ausmass der Furcht aus
Ergebnissen von Befragungen abgeleitet. Wie bei allen
sozialwissenschaftlichen Konstrukten stellt sich jedoch die Frage
nach der Qualitat der so erhobenen Daten. In diesem Buch werden
bisher verwendete Messinstrumente untersucht und mogliche
Alternativen diskutiert. Dazu werden Daten aus qualitativen
Intensivinterviews, Experimenten und bundesweiten Surveys
verwendet. Das Konstrukt Kriminalitatsfurcht ist ein Beispiel fur
Einstellungen, die mit Hilfe von Befragungsdaten gemessen werden.
Demnach sind die hier dargestellten Gutekriterien und ihre
Anwendung beispielhaft fur die Messung anderer
Einstellungskonstrukte. In dieser Hinsicht kann dieses Buch fur
Methodologen und Sozialforscher aller Anwendungsfelder von Nutzen
sein."
Data Analysis Using Stata, Third Edition is a comprehensive
introduction to both statistical methods and Stata. Beginners will
learn the logic of data analysis and interpretation and easily
become self-sufficient data analysts. Readers already familiar with
Stata will find it an enjoyable resource for picking up new tips
and tricks. The book is written as a self-study tutorial and
organized around examples. It interactively introduces statistical
techniques such as data exploration, description, and regression
techniques for continuous and binary dependent variables. Step by
step, readers move through the entire process of data analysis and
in doing so learn the principles of Stata, data manipulation,
graphical representation, and programs to automate repetitive
tasks. This third edition includes advanced topics, such as
factor-variables notation, average marginal effects, standard
errors in complex survey, and multiple imputation in a way, that
beginners of both data analysis and Stata can understand. Using
data from a longitudinal study of private households, the authors
provide examples from the social sciences that are relatable to
researchers from all disciplines. The examples emphasize good
statistical practice and reproducible research. Readers are
encouraged to download the companion package of datasets to
replicate the examples as they work through the book. Each chapter
ends with exercises to consolidate acquired skills.
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