IDLab, Department of Computer Science, University of Antwerp - imec, 2000, Antwerp, Belgium.
Department of Physics and Astronomy, Ghent University, 9000, Ghent, Belgium.
Sci Rep. 2022 Feb 10;12(1):2304. doi: 10.1038/s41598-022-06144-4.
Social science studies dealing with control in networks typically resort to heuristics or solely describing the control distribution. Optimal policies, however, require interventions that optimize control over a socioeconomic network subject to real-world constraints. We integrate optimisation tools from deep-learning with network science into a framework that is able to optimize such interventions in real-world networks. We demonstrate the framework in the context of corporate control, where it allows to characterize the vulnerability of strategically important corporate networks to sensitive takeovers, an important contemporaneous policy challenge. The framework produces insights that are relevant for governing real-world socioeconomic networks, and opens up new research avenues for improving our understanding and control of such complex systems.
社会科学研究中涉及网络控制的部分通常采用启发式方法或仅仅描述控制分布。然而,最优策略需要进行干预,以优化受现实世界约束的社会经济网络的控制。我们将深度学习的优化工具与网络科学相结合,形成一个框架,能够在真实网络中优化这种干预措施。我们在公司控制的背景下演示了该框架,该框架允许对战略重要的公司网络在面临敏感收购时的脆弱性进行特征化,这是当前一个重要的政策挑战。该框架提供了对治理现实社会经济网络具有重要意义的见解,并为提高我们对这类复杂系统的理解和控制开辟了新的研究途径。