Conducting Online Research on Amazon Mechanical Turk® and Beyond, written by Leib Litman and Jonathan Robinson, provides both students and experienced researchers with essential information about the online platforms most often used for social science research. This insightful and accessible text answers common questions like, ‘How do I maintain data quality in online studies?, ‘ ‘What is the best way to recruit hard-to-reach samples?’ and ‘How can researchers navigate the ethical issues that are unique to online research?’ Drawing on their experiences as the founders of Cloud Research (formerly Turk Prime), the authors provide information that guides new users planning their first online studies and engages even the most experienced researchers with detailed discussions about the challenges of online research. The book begins with an overview of Amazon’s Mechanical Turk and its rapid rise within academic research. Then, the authors describe how to set up an MTurk study with screenshots that walk readers through the steps of creating an account, designing a study, collecting data, and using third-party applications to enhance MTurk’s functionality. Later chapters provide readers with a detailed understanding of the MTurk environment and use data from hundreds of thousands of participants and tens of millions of completed tasks to dive into issues like participant demographics, sources of sampling bias, and the generalizability of findings from MTurk. Finally, the book explores the benefits of using other online platforms as a complement to MTurk and the ethical issues that are unique to conducting research with online participant platforms. Throughout the book, the authors share hands-on advice and best practices, such as those for conducting longitudinal studies or carrying out complex studies. Altogether the mix of data, insight, and advice make this book an essential resource for researchers who want to understand the online environment and the most effective ways to conduct research online.
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Chapter 1: Introduction
A Scientific Revolution in the Making
A Brief History of Online Research in the Social and Behavioral Sciences: From HTML 2.0 to Mechanical Turk
The Use of Online Samples in Applied Behavioral Research
Amazon Mechanical Turk
Chapter 2: The Mechanical Turk Ecosystem – Leib Litman, Cheskie Rosenzweig, Jonathan Robinson
How Quality is Maintained
Reputation Mechanism
Selectively Recruiting Specific Workers
Protections for Workers
Communicating with Workers
A Worker’s Perspective
Worker Communities
Chapter 3: Conducting a Study on Mechanical Turk
Sample Project
Setting up a Requester Account on Mechanical Turk
Creating a HIT
The ‘Design Layout’ tab
Monitoring Progress on the Requester’s Dashboard
When a Worker Runs Out of Time
Sample Study Results
Conducting Follow-up Studies Using Requester-Issued Qualifications
Appendix A: Checklist for best practices of setting up a Mechanical Turk HIT
Chapter 4: API and Third Party Apps
Third Party API-based Platforms
Common Uses for API Scripts and Third Party API-based Apps
Turk Prime
Chapter 5: Data Quality Issues on MTurk – Jesse Chandler, Gabriele Paolacci, David Hauser
Defining and Measuring Data Quality
Measuring Individual Participant Data Quality
Causes of and Cures for Poor Data Quality
Concluding Thoughts
Chapter 6: Who are the Mechanical Turk Workers?
Sources of Data
Location of Workers in the US
Demographics of Mechanical Turk
Chapter 7: Sampling Mechanical Turk Workers: Problems and Solutions
Sampling on Mechanical Turk
Sources of Sampling Bias
The Problem of Superworkers
Time-of-day Effects
Pay Rate
Dropout
Sampling Best Practices
Chapter 8: Data Representativeness of Mechanical Turk Samples
Representativeness, surveys, and survey sampling
The methodology of survey sampling
Mechanical Turk as a sampling frame
The fit-for-purpose framework
Chapter Overview:
Chapter 9: Conducting Longitudinal Research on Amazon Mechanical Turk
Why Longitudinal Research?
Retention, Longitudinal Research, and MTurk
Case Studies
Best practices for longitudinal research
Chapter 10: Beyond Mechanical Turk: Using Online Market Research Platforms
Limitations of MTurk
Online probability-based panels
Online market research platforms
Overall comparisons between Mechanical Turk and market research platforms
Chapter 11: Conducting Ethical Online Research: A Data-Driven Approach
Historical background
Risk of harm in online research
Research on sensitive topics
A deeper dive into controversial and complex issues
Economics of Mechanical Turk: Considerations for setting wages
Setting wages: Considerations of ethics and methodology
Considerations for rejecting, blocking and disqualifying workers.
Practical advice for requester/worker interactions
Anonymity
Appendix A
Mengenai Pengarang
Jonathan Robinson has been creating software since he was 12 and started his first software company with a few high school friends at age 15. He continued to develop his software skills and apply his expertise to more complex problems as he completed his BA at Queens College, and his MS and Ph D with a dissertation in the field of robotic vision and digital curve fitting while at the City University of New York. Jonathan conceived of using Amazon’s Mechanical Turk for participants before there was public academic discussion of its application to research. He designed and implemented the core Cloud Research.com (previously Turk Prime) system together with his coauthor, Leib Litman. Cloud Research was the first cloud-based participant management system that successfully adapted Mechanical Turk for research by designing the features researchers need and managing the complexity that may get in the way of collecting high-quality data.Jonathan is the co-CEO and chief technology officer of Cloud Research. He is also currently an associate professor and chair of computer science at Lander College, a division of Touro College. In that capacity, he mentors, inspires, and educates the next generation of software engineers and introduces them to his passion for melding cutting-edge technologies with solving real-world problems in the areas of academic and corporate research, digital image computation, approximation, and web application engineering.