A Variant Q-Sorting Methodology for Building Diagnostic Trees

IEEE Transactions on Engineering Management, PP(99), 1-13. doi:10.1109/tem.2021.3078582

Posted: 2 Nov 2021

See all articles by Sahar Sabbaghan

Sahar Sabbaghan

London South Bank University

Cecil Eng Huang Chua

Missouri University of Science and Technology

Lesley Gardner

University of Auckland Business School

Date Written: 2021

Abstract

Diagnostic theories are fundamental to information system (IS) practice and are represented as trees. While there are approaches for validating diagnostic trees, these validate the overall performance of the tree rather than identifying ways incorrect diagnoses can occur. It is important to fully validate diagnostic trees because even if the tree gives the correct decision “most of the time,” it is possible for incorrect decisions traveling down little-used branches of the tree to result in catastrophic decisions. In this article, we describe the process of using a variant of q-sorting to validate diagnostic trees. In this methodology, diagnostic trees that independent experts develop are transformed into a quantitative form, and that quantitative form is tested to determine the inter-rater reliability of the individual branches in the tree. The trees are then successively transformed to incrementally test if they branch in the same way. The results help researchers not only identify quality items for use in a diagnostic tree but also facilitate diagnoses of problems with those items and facilitate the reconciliation of discrepant trees by experts. The methodology validates not only the whole tree but also its subparts. Full paper available at 10.1109/TEM.2021.3078582

Keywords: Diagnostic theories, diagnostic-tree, inter-rater reliability, q-sorting, tree

Suggested Citation

Sabbaghan, Sahar and Chua, Cecil Eng Huang and Gardner, Lesley, A Variant Q-Sorting Methodology for Building Diagnostic Trees (2021). IEEE Transactions on Engineering Management, PP(99), 1-13. doi:10.1109/tem.2021.3078582, Available at SSRN: https://ssrn.com/abstract=3948324

Sahar Sabbaghan (Contact Author)

London South Bank University ( email )

103 Borough Road
London, Greater London SE1 OAA
United Kingdom

Cecil Eng Huang Chua

Missouri University of Science and Technology ( email )

1870 Miner Cir
Rolla, MO 65409
United States

Lesley Gardner

University of Auckland Business School ( email )

12 Grafton Rd
Private Bag 92019
Auckland, 1010
New Zealand

HOME PAGE: http://https://www.business.auckland.ac.nz/people/lgar016

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