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Francisco Olivos; Minhui Liu – Field Methods, 2025
The rapid advancements in generative artificial intelligence have opened new avenues for enhancing various aspects of research, including the design and evaluation of survey questionnaires. However, the recent pioneering applications have not considered questionnaire pretesting. This article explores the use of GPT models as a useful tool for…
Descriptors: Artificial Intelligence, Questionnaires, Test Construction, Pretesting
Erdman, Chandra; Adams, Tamara; O'Hare, Barbara C. – Field Methods, 2016
Realistic response rate expectations are important for successfully allocating and managing data collection efforts under limited resources. Interviewer performance is often evaluated against response rate standards, and face-to-face interviewer performance can vary due to, in part, the socioeconomic characteristics of the neighborhoods in which…
Descriptors: Response Rates (Questionnaires), Standards, National Surveys, Interviews

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