Please use this identifier to cite or link to this item: https://repository.seku.ac.ke/handle/123456789/6276
Title: Symmetric stratified truth detection models
Authors: Mbala, Simon
Manene, M. M.
Ottieno, J. A. M.
Keywords: randomized response
asymmetric
symmetric
sensitive questions
sensitive attribute validity
stratified
Issue Date: Mar-2020
Publisher: Pushpa Publishing House
Citation: Far East Journal of Theoretical Statistics Volume 58, Issue 2, Pages 77 - 89
Abstract: When collecting sensitive information, many respondents are not willing to tell the truth about their attribute. For these respondents to give truthful information, they need to be assured that their identity will not be known. This can be achieved if data is collected in a randomization manner. Randomized response techniques (RRTs) aim to reduce untruthfulness in the assessment of sensitive attributes but differ regarding privacy protection. The less protection a method offers, the more likely respondents lie about their true characteristics. In this paper, we have shown that the symmetric stratified approach is relatively better than asymmetric stratified approach. We have shown that there is more compliance in the symmetric stratified models than in the asymmetric stratified models and therefore we recommend the use of symmetric stratified technique as a sampling method in collecting data on sensitive characteristics.
Description: DOI: http://dx.doi.org/10.17654/TS058020077
URI: http://www.pphmj.com/abstract/13216.htm
http://repository.seku.ac.ke/handle/123456789/6276
ISSN: 0972-0863
Appears in Collections:School of Science and Computing (JA)

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