LogoTeluq
Français
Logo
Open access research
publication repository

Overcoming the AI opacity in ESG reporting: A Digital Platform-based Knowledge Boundary-Spanning Perspective [r-libre/3438]

Vieru, Dragos, & Plugge, Albert (2025). Overcoming the AI opacity in ESG reporting: A Digital Platform-based Knowledge Boundary-Spanning Perspective. In Proceedings of the 58th Annual Hawaii Conference on System Sciences. Hawaii : University of Hawaii at Manoa.

File(s) available for this item:
[img]  PDF - Vieru-Plugge 2025.pdf
Content : Final, unpublished version
License : Creative Commons Attribution Non-commercial No Derivatives.
 
Item Type: Papers in Conference Proceedings
Refereed: Yes
Status: Published
Abstract: Environmental, Social, and Governance (ESG) reporting has become increasingly important for organizations after the introduction of EU directives. The development of ESG platform functionality is impeded by the scattered knowledge across different stakeholders and the absence of crisp regulatory standards. Artificial intelligence-based systems, such as algorithms integrated with ESG training, can transform investment by providing precise and relevant information. Adopting an Action Design Research methodology, we use four effective knowledge boundary-spanning (EKBS) mechanisms to illuminate the practices of a team of three actors (a platform owner, a complementor, and a platform user) co-designing an explainable artificial intelligence (XAI) tool for ESG reporting in the context of a multi-boundary digital platform. Our data analysis suggests that using EKBS mechanisms is essential for ensuring explainability and trust in AI-based tools.
Depositor: Vieru, Dragos
Owner / Manager: Dragos Vieru
Deposited: 25 Oct 2024 13:42
Last Modified: 01 Mar 2025 06:15

Actions (login required)

RÉVISER RÉVISER