Survey Optimization via the Haphazard Intentional Sampling Method

Author:

Miguel Miguel,Waissman Rafael,Lauretto MarceloORCID,Stern JulioORCID

Abstract

In previously published articles, our research group has developed the Haphazard Intentional Sampling method and compared it to the Rerandomization method proposed by K.Morgan and D.Rubin. In this article, we compare both methods to the pure randomization method used for the Epicovid19 survey, conducted to estimate SARS-CoV-2 prevalence in 133 Brazilian Municipalities. We show that Haphazard intentional sampling can either substantially reduce operating costs to achieve the same estimation errors or, the other way around, substantially improve estimation precision using the same sample sizes.

Publisher

MDPI AG

Reference16 articles.

1. Intentional Sampling by goal optimization with decoupling by stochastic perturbation;Lauretto;AIP Conf. Proc.,2012

2. Haphazard intentional allocation an rerandomization to improve covariate balance in experiments;Lauretto;AIP Conf. Proc,2017

3. Combining Optimization and Randomization Approaches for the Design of Clinical Trials;Fossaluza,2015

4. Decoupling, Sparsity, Randomization, and Objective Bayesian Inference;Stern;Cybern. Hum. Knowing,2008

5. Haphazard Intentional Sampling Techniques in Network Design of Monitoring Stations

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