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Towards an artificial intelligence-driven framework for project risk management

Towards an artificial intelligence-driven framework for project risk management
Towards an artificial intelligence-driven framework for project risk management
Project risk management is a process of identifying, assessing, and responding to potential adverse events throughout the life cycle of a project to minimize their impacts and capitalize on opportunities. Traditional project risk management approaches often rely on subjective expert judgment, static risk models, siloed data, and reactive strategies. However, with the increasing complexity and dynamism of projects, new sophisticated project risk management approaches are necessary to address the limitations of traditional methods. Artificial intelligence (AI), particularly through machine learning, can reimagine how risks are managed in projects, offering enhanced predictive capabilities, real-time insights, and adaptive strategies. While there is ongoing research, existing studies have only provided partial insights, leading to several debates on the suitable model for project risk management. Moreover, existing research has largely focused on generic risk prediction, while other important aspects of project risk management, such as risk prediction explainability, scoring, prioritization, and mitigation, remain largely unexplored. To address these knowledge gaps, we develop an intelligent AI-driven project risk management framework that combines AI models, tools, and techniques with risk identification, evaluation, and mitigation capabilities.
Senyo, PK
b2150f66-8ef9-48f7-af32-3b055d4fa691
Senyo, PK
b2150f66-8ef9-48f7-af32-3b055d4fa691

Senyo, PK (2025) Towards an artificial intelligence-driven framework for project risk management. In American Conference on Information Systems. 2 pp .

Record type: Conference or Workshop Item (Paper)

Abstract

Project risk management is a process of identifying, assessing, and responding to potential adverse events throughout the life cycle of a project to minimize their impacts and capitalize on opportunities. Traditional project risk management approaches often rely on subjective expert judgment, static risk models, siloed data, and reactive strategies. However, with the increasing complexity and dynamism of projects, new sophisticated project risk management approaches are necessary to address the limitations of traditional methods. Artificial intelligence (AI), particularly through machine learning, can reimagine how risks are managed in projects, offering enhanced predictive capabilities, real-time insights, and adaptive strategies. While there is ongoing research, existing studies have only provided partial insights, leading to several debates on the suitable model for project risk management. Moreover, existing research has largely focused on generic risk prediction, while other important aspects of project risk management, such as risk prediction explainability, scoring, prioritization, and mitigation, remain largely unexplored. To address these knowledge gaps, we develop an intelligent AI-driven project risk management framework that combines AI models, tools, and techniques with risk identification, evaluation, and mitigation capabilities.

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e-pub ahead of print date: 7 July 2025
Published date: 16 August 2025

Identifiers

Local EPrints ID: 504251
URI: http://eprints.soton.ac.uk/id/eprint/504251
PURE UUID: 73d879be-09a8-4d0f-96ba-6afb7d28ad50
ORCID for PK Senyo: ORCID iD orcid.org/0000-0001-7126-3826

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Date deposited: 02 Sep 2025 16:46
Last modified: 03 Sep 2025 02:00

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