独创性
公司治理
业务
技能管理
利益相关者
主流
背景(考古学)
公共关系
营销
财务
政治学
社会学
定性研究
生物
古生物学
法学
社会科学
作者
Abdullahi Ahmed Umar,Noor Amila Wan Abdullah Zawawi,Abdul‐Rashid Abdul‐Aziz
标识
DOI:10.1108/ecam-08-2022-0729
摘要
Purpose This study aims to seek, on the basis of Hofstede's culture consequences, to explore the notion that regional characteristics may influence the prioritisation of certain types of public-private partnerships (PPP) contract governance skills over others. It further sets out to determine which skills are considered the most critical between the groups of respondents surveyed. Design/methodology/approach To bring this important and neglected perspective into the mainstream of PPP discussions, the study, being of an exploratory nature, relied on a survey of 340 respondents from around the globe. The respondents are a rich mix of public policy experts, economists, construction professionals, project finance experts, lawyers and academic researchers in PPP.s. Findings Analysis revealed that, regional characteristics was an important factor influencing skills prioritisation. Furthermore, exploratory factor analysis with Monte Carlo principal component analysis (PCA) confirmation revealed that project management, contract design, negotiations, performance management and stakeholder management skills were very critical for successful contract management of PPP projects. Practical implications The findings indicate that the design and implementation of regulatory governance for infrastructure PPPs should be context-specific rather than the current one-size-fits all model. Training should be tailored to reflect regional specific characteristics. Originality/value Studies are increasingly pointing to the absence of critical PPP skills among institutions responsible for managing PPP contracts. This lack of capacity has resulted in poor oversight of private companies providing public services resulting in poor services, and financial recklessness, which threaten the sustainability of service provision.
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