Building a hierarchical framework of corporate sustainability transition challenges using the qualitative information approach

Tseng, M.-L., Kurrahman, T., Hanita, A., Lim, M. K. and Negash, Y. (2021) Building a hierarchical framework of corporate sustainability transition challenges using the qualitative information approach. Industrial Management and Data Systems, 121(5), pp. 1107-1141. (doi: 10.1108/IMDS-08-2020-0471)

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Abstract

Purpose: This study aims to form a valid measure and hierarchical framework to achieve corporate sustainability transitions (CSTs). Design/methodology/approach: The fuzzy Delphi method (FDM) is applied to validate and eliminate challenges in sustainability transition regarding qualitative information. Fuzzy interpretive structural modeling (FISM) is used to build a hierarchical framework under uncertainties. Findings: This study finds that technology investment, data management, eco-management and sociospatial embedding challenges are the highest hierarchical framework levels and affect CST. Practical implications: A lack of awareness and knowledge, a lack of commitment, a lack of strategy, tolerance of unsustainable practices, a lack of stakeholder participation and a fragmented market are perceived as the challenges that show the highest driving and dependence power. These challenges serve as a reference for government and construction firms in the transition to sustainable corporate practices. Originality/value: Unsustainable corporate practices have caused large amounts of energy consumption, resource depletion and environmental impacts. There are challenges in transitioning to corporate sustainability that must be addressed. The most significant challenges that need to be solved to facilitate the transition to corporate sustainability are identified and arranged in a hierarchical model. By identifying the hierarchical relationships among the challenges, a theoretical framework that extends the existing models is developed to assist decision-makers.

Item Type:Articles
Additional Information:This study is partially supported by the Ministry of Science and Technology, Taiwan. 108-2221-E-468-004 -MY2.
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Lim, Professor Ming
Authors: Tseng, M.-L., Kurrahman, T., Hanita, A., Lim, M. K., and Negash, Y.
College/School:College of Social Sciences > Adam Smith Business School > Management
Journal Name:Industrial Management and Data Systems
Publisher:Emerald
ISSN:0263-5577
Published Online:13 April 2021

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