计算机科学
决策支持系统
决策模型
公司治理
决策工程
过程(计算)
背景(考古学)
知识管理
决策分析
R型铸件
人气
商业决策图
过程管理
选择(遗传算法)
管理科学
工程类
人工智能
业务
机器学习
统计
古生物学
操作系统
财务
生物
社会心理学
数学
心理学
作者
Elena Baninemeh,Siamak Farshidi,Slinger Jansen
标识
DOI:10.1016/j.bcra.2023.100127
摘要
Decentralized autonomous organizations are a new form of smart contract based governance. Decentralized autonomous organization platforms, which support the creation of such organizations, are becoming increasingly popular, such as Aragon and Colony. Selecting the best fitting platform is challenging for organizations, as a significant number of decision criteria, such as popularity, developer availability, governance issues, and consistent documentation of such platforms, should be considered. Additionally, decision-makers at the organizations are not experts in every domain, so they must continuously acquire volatile knowledge regarding such platforms. Supporting decision-makers in selecting the right decentralized autonomous organizations by designing an effective decision model is the main objective of this study. We aim to provide more insight into their selection process and reduce time and effort significantly by designing a decision model. This study presents a decision model for the decentralized autonomous organization platform selection problem. The decision model captures knowledge regarding such platforms and concepts systematically. The decision model is based on an existing theoretical framework that assists software engineers with a set of Multi-Criteria Decision-Making problems in software production. We conducted three industry case studies in the context of three decentralized autonomous organizations to evaluate the effectiveness and efficiency of the decision model in assisting decision-makers. The case study participants declared that the decision model provides significantly more insight into their selection process and reduces time and effort. We observe in the empirical evidence from the case studies that decision-makers can make more rational, efficient, and effective decisions with the decision model. Furthermore, the reusable form of captured knowledge regarding Decentralized Autonomous Organization Platforms can be employed by other researchers in their future investigations.
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