Research Methods
Position: Insights from Survey Methodology can Improve Training Data
External / Open Access
Abstract
Whether future AI models are fair, trustworthy, and aligned with the public's interests rests in part on our ability to collect accurate data about what we want the models to do. However, collecting high-quality data is difficult, and few AI/ML researchers are trained in data collection methods. Recent research in data-centric AI has show that higher quality training data leads to better performing models, making this the right moment to introduce AI/ML researchers to the field of survey methodology, the science of data collection. We summarize insights from the survey methodology literature and discuss how they can improve the quality of training and feedback data. We also suggest collaborative research ideas into how biases in data collection can be mitigated, making models more accurate and human-centric.
Full Title
Position: Insights from Survey Methodology can Improve Training Data
Primary Author
Stephanie Eckman
Co-Authors
Barbara Plank, Frauke Kreuter
Publication Type
Preprint
Year
2024
Journal
arXiv Preprint
Category
Research Methods
Institution
External / Open Access
Access
Open Access
Added to Library
March 24, 2026
Cite This Publication
APA
Stephanie Eckman, Barbara Plank, Frauke Kreuter (2024). *Position: Insights from Survey Methodology can Improve Training Data*. External / Open Access.
MLA
Stephanie Eckman. *Position: Insights from Survey Methodology can Improve Training Data*. External / Open Access, 2024.