Respondent privacy and estimation efficiency in randomized response surveys for discrete-valued sensitive variables
Mausumi Bose

TL;DR
This paper develops a randomized response method for surveys on discrete-valued sensitive variables, balancing respondent privacy with estimation efficiency, and extends the approach to polychotomous populations.
Contribution
It introduces a new randomization device and estimation procedure for discrete variables, enhancing privacy protection while maximizing efficiency.
Findings
Proposed a novel randomization device for discrete variables
Derived an estimation method that balances privacy and efficiency
Extended results to polychotomous populations
Abstract
In some socio-economic surveys, data are collected on sensitive or stigmatizing issues such as tax evasion, criminal conviction, drug use, etc. In such surveys, direct questioning of respondents is not of much use and the randomized response technique is used instead. A few researchers have studied the issue of privacy protection or respondent jeopardy for surveys on dichotomous populations, where the objective is to estimate the proportion of persons bearing the sensitive trait. However, not much is yet known about respondent protection when the variable under study takes discrete numerical values and the objective of the survey is to estimate the population mean of this variable. In this article we study this issue. We first propose a randomization device for this situation and give the corresponding estimation procedure. We next propose a measure of privacy and show that given a…
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Taxonomy
TopicsSurvey Sampling and Estimation Techniques · Hate Speech and Cyberbullying Detection
