🌙

基于平行智能的去中心化自治组织可预测治理新方法

A Novel Approach for Predictable Governance of Decentralized Autonomous Organizations Based on Parallel Intelligence

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2022
被引 32
ABS 3

中文导读

针对去中心化自治组织(DAO)的治理问题,基于平行智能理论提出一种新的可预测治理框架,并通过GnosisDAO的计算实验验证其有效性。

Abstract

Decentralized autonomous organizations (DAOs) have become an indispensable part of digital infrastructure in recent years. The unique organizational characteristics and functional structure empower them to become an effective tool for solving corporate governance issues, including contract risks, principal-agent dilemmas, etc. However, DAOs themselves also face a variety of governance issues. On one hand, as a new economic organization model, the existing corporate governance theories and methods are no longer fully applicable to DAOs. On the other hand, unpredictable logic vulnerabilities and code loopholes in the governance mechanism might cause devastating damage to DAOs. The parallel intelligence theory based on the ACP method (i.e., artificial systems, computational experiments, and parallel execution) is an elegant research paradigm and a practical approach tailored to solving these challenges. As such, we propose a novel parallel governance framework for DAOs based on the parallel intelligence theory and further discuss its technical methodology and implementation model. Furthermore, we construct a parallel governance system for GnosisDAO and conduct computational experiments to validate the effectiveness of its governance mechanism. The experimental results not only confirm the defects of the GnosisDAO governance mechanism but also illustrate parallel governance as a useful research direction to solve existing governance problems of DAOs.

公司治理去中心化自治组织平行智能计算实验