Gustavo Diaz’s research while affiliated with McMaster University and other places

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Publications (1)


Figure 1. Standard and DLE estimates for Alvarez et al (2019). Note: Rows indicate different estimators. Vertical lines denote 95% confidence intervals.
Figure 2. Statistical power under response deflation and inflation. Note: Each point is based on 1,000 simulations. The dotted vertical line denotes the true prevalence rate.
Research design in Alvarez et al (2019)
Testing for response deflation in Alvarez et al (2019) Difference in differences Stephenson's signed rank (m = 10)
Assessing the Validity of Prevalence Estimates in Double List Experiments
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September 2023

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3 Citations

Journal of Experimental Political Science

Gustavo Diaz

Social scientists use list experiments in surveys to estimate the prevalence of sensitive attitudes and behaviors in a population of interest. However, the cumulative evidence suggests that the list experiment estimator is underpowered to capture the extent of sensitivity bias in common applications. The literature suggests double list experiments (DLEs) as an alternative to improve along the bias-variance frontier. This variant of the research design brings the additional burden of justifying the list experiment identification assumptions in both lists, which raises concerns over the validity of DLE estimates. To overcome this difficulty, this paper outlines two statistical tests to detect strategic misreporting that follows from violations to the identification assumptions. I illustrate their implementation with data from a study on support toward anti-immigration organizations in California and explore their properties via simulation.

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Citations (1)


... Hence, the double-list experiment was applied to provide a clearer estimate by testing the same treatment statement with two subsamples (Droitcour, et al. 1991). The double list experiment reduces variability by half in estimates without compromising bias reduction (Miller 1984;Diaz 2023). To test the impacts of the treatments, two baseline lists are required so that the sensitive statement, as a treatment, can be presented to all respondents. ...

Reference:

Revealed reality of cultivation and licit/illicit use of Cannabis (Cannabis sativa L.) in the western mid-hills of Nepal: a list experiment
Assessing the Validity of Prevalence Estimates in Double List Experiments

Journal of Experimental Political Science