激励
大型项目
公司治理
独创性
过程管理
计算机科学
价值(数学)
控制论
激励计划
产业组织
业务
知识管理
经济
微观经济学
财务
定性研究
管理
机器学习
社会学
人工智能
社会科学
作者
Yuying Wang,Guohua ZHOU
出处
期刊:Kybernetes
[Emerald Publishing Limited]
日期:2023-08-10
卷期号:53 (12): 5220-5241
被引量:4
标识
DOI:10.1108/k-04-2023-0696
摘要
Purpose As the complexity and uncertainty of megaprojects make it difficult for traditional management models to address the difficulties, this paper aims to design a performance incentive contract through IT applications, thereby promoting the formation of an information-based governance mechanism for megaprojects and facilitating the transformation and upgrading of the construction management model of megaprojects to informatisation. Design/methodology/approach This paper introduced IT applications into the performance assessment and used the proportion of IT applications replacing traditional manual management as a variable. It analysed different replacement ratios to obtain the optimal solution for the change of contractors behaviours and promote the optimal performance incentive for the informatisation in megaprojects. Findings The results show that under the condition of the optimal replacement ratio, achieving the optimal state of a mutual win-win situation is possible for the benefit of both sides. The counter-intuitive finding is that the greater the replacement ratio is not, the better, but those other constraints are also taken into account. Originality/value This study enriched the research of the performance configuration incentive from a practical perspective. It extended the research framework of IT incentive mechanisms in the governance of megaprojects from a management theory perspective. It clarified the role of IT applications in incentive mechanisms and the design process of optimal incentive contracts under different performance incentive states. The incentives made the contractors work harder to meet the owner's requirements, and it could improve the efficiency of megaprojects, thus better achieving megaproject objectives.
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