Guides the design, implementation, and statistical analysis of list experiments to measure sensitive behaviors accurately.
This skill provides a comprehensive framework for conducting list experiments (Item Count Technique), a survey method used to elicit honest responses on sensitive topics. It assists researchers through the entire pipeline—from evaluating if a list experiment is warranted based on social reference theory to selecting control items, choosing design variants (single, double, or placebo), and performing rigorous diagnostic tests. By codifying standards from methodological texts, it helps users mitigate ceiling and floor effects, test for design-effect violations, and select the most robust estimators, such as NLSreg or the combined estimator, to ensure high-quality statistical inference.
주요 기능
01Implements diagnostic workflows for No-Design-Effect and floor/ceiling assumption testing
0215 GitHub stars
03Supports advanced design variants including Double List (DLE) and Placebo-item designs
04Evaluates sensitivity bias and precision trade-offs to determine if a list experiment is warranted
05Guides selection between Difference-in-Means, NLSreg, and MLreg estimators
06Provides constraints and prevalence targets for designing effective control item lists
사용 사례
01Optimizing statistical power and estimator choice for sensitive question analysis in social science research
02Performing diagnostic tests on existing survey data to identify mechanical inflation or artificial deflation
03Designing survey instruments to measure socially stigmatized behaviors like prejudice or illegal activities