Machine learning dismantling and early-warning signals of disintegration in complex systems
This research provides a quantitative method for policymakers and decision-makers to assess systemic risk and detect early-warning signals of collapse in complex systems, which is an incremental improvement over existing heuristic approaches.
This paper addresses the NP-hard problem of network dismantling, aiming to identify the minimal set of units to attack to disintegrate a complex network. They demonstrate that a machine learning model trained on smaller systems can more efficiently dismantle large-scale social, infrastructural, and technological networks compared to human-based heuristics.
From physics to engineering, biology and social science, natural and artificial systems are characterized by interconnected topologies whose features - e.g., heterogeneous connectivity, mesoscale organization, hierarchy - affect their robustness to external perturbations, such as targeted attacks to their units. Identifying the minimal set of units to attack to disintegrate a complex network, i.e. network dismantling, is a computationally challenging (NP-hard) problem which is usually attacked with heuristics. Here, we show that a machine trained to dismantle relatively small systems is able to identify higher-order topological patterns, allowing to disintegrate large-scale social, infrastructural and technological networks more efficiently than human-based heuristics. Remarkably, the machine assesses the probability that next attacks will disintegrate the system, providing a quantitative method to quantify systemic risk and detect early-warning signals of system's collapse. This demonstrates that machine-assisted analysis can be effectively used for policy and decision making to better quantify the fragility of complex systems and their response to shocks.