Streamlined Randomized Response Model Designed to Estimate Extremely Confidential Attributes

Ahmad M. Aboalkhair, El Emam El-Hosseiny, Mohammad A. Zayed, Tamer Elbayoumi, Mohamed Ibrahim, A. M. Elshehawey

Research output: Contribution to journalArticlepeer-review

Abstract

When addressing highly sensitive topics, respondents may provide incomplete or untruthful disclosures, compromising data accuracy. To mitigate this issue, this study introduces an innovative and efficient randomized response framework designed to enhance the estimation of highly sensitive attributes. The proposed model refines Aboalkhair’s (2025) framework, which has been established as an effective alternative to Warner’s and Mangat’s models. This study evaluates the conditions under which the new model achieves greater efficiency than existing approaches. Through theoretical analysis and numerical simulations, accounting for partial truthful reporting, the results demonstrate the model’s superior efficiency. Additionally, the paper quantifies the privacy protection level afforded by the new approach.

Original languageEnglish
Pages (from-to)2200-2207
Number of pages8
JournalStatistics, Optimization and Information Computing
Volume14
Issue number5
DOIs
StatePublished - Oct 26 2025

Keywords

  • 62D05
  • Randomized response technique
  • confidential attributes
  • incomplete truthfulness
  • privacy protection
  • response error

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