Back to search

A New Approach to Detecting Cheating in Sensitive Surveys: The Cheating Detection Triangular Model

DSEID
DSEID-001-6784027
DOI
10.1177/00491241211055764
Journal
Sociological Methods & Research
Publisher
SAGE Publications
Published
2024-2
Status
metadata_only

Abstract

Indirect questioning techniques such as the randomized response technique aim to control social desirability bias in surveys of sensitive topics. To improve upon previous indirect questioning techniques, we propose the new Cheating Detection Triangular Model. Similar to the Cheating Detection Model, it includes a mechanism for detecting instruction non-adherence, and similar to the Triangular Model, it uses simplified instructions to improve respondents’ understanding of the procedure. Based on a comparison with the known prevalence of a sensitive attribute serving as external criterion, we report the first individual-level validation of the Cheating Detection Model, the Triangular Model and the Cheating Detection Triangular Model. Moreover, the sensitivity and specificity of all models was assessed, as well as the respondents’ subjective evaluation of all questioning technique formats. Based on our results, the Cheating Detection Triangular Model appears to be the best choice among the investigated indirect questioning techniques.

Metadata is indexed. Open-access discovery has not completed for this record yet.

Publisher or DOI landing page

PDF

No local PDF is available.

GROBID Extracted text; discontinued.

This text is generated from TEI extraction for accessibility, search, and TTS. Formulas, tables, figures, page layout, and references may not perfectly match the original PDF.

No accessible text representation is available. The text extraction service has been discontinued for the time being. If you require this service, for accessibility or any other reason, please submit an issue/request on this page.

Metadata

Title
A New Approach to Detecting Cheating in Sensitive Surveys: The Cheating Detection Triangular Model
Delta ID
DSEID-001-6784027
Authors
Julia Meisters, Adrian Hoffmann, Jochen Musch
Abstract source
crossref
Source URL
None
Access
closed_or_uncertain
Licence
unknown
PDF SHA-256
TEI SHA-256
GROBID

Issues

No public issues have been filed for this DOI.

Submit an issue

Record history

WhenEventFieldOldNew
2026-06-18 19:37:53.011249+00:00identifier_assignedDSEIDDSEID-001-6784027