| Literature DB >> 23568033 |
Danilo Delpini1, Stefano Battiston, Massimo Riccaboni, Giampaolo Gabbi, Fabio Pammolli, Guido Caldarelli.
Abstract
The Statistical Physics of Complex Networks has recently provided new theoretical tools for policy makers. Here we extend the notion of network controllability to detect the financial institutions, i.e. the drivers, that are most crucial to the functioning of an interbank market. The system we investigate is a paradigmatic case study for complex networks since it undergoes dramatic structural changes over time and links among nodes can be observed at several time scales. We find a scale-free decay of the fraction of drivers with increasing time resolution, implying that policies have to be adjusted to the time scales in order to be effective. Moreover, drivers are often not the most highly connected "hub" institutions, nor the largest lenders, contrary to the results of other studies. Our findings contribute quantitative indicators which can support regulators in developing more effective supervision and intervention policies.Entities:
Year: 2013 PMID: 23568033 PMCID: PMC3620902 DOI: 10.1038/srep01626
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1(a). A sample snapshot of the daily interbank lending network. External inputs on the yellow nodes (drivers) allow to control the state of the whole system. (b). Time evolution of the fraction of drivers: at the monthly scale less than 40% of the banks drive the system. (c). The average fraction of drivers decays with a neat power law scaling with the aggregation scale Δ.
Figure 2(a). Scatter plot of the mean degree of driver vertices versus the mean degree in the network. On average drivers do not correspond to hubs. (b). Complementary of the cumulative distribution function for the out-degree of drivers nodes. Even though the network is scale free, the out-degree of drivers decays faster than a power law.
Figure 3The slow decay of the driver resilience; this long-range memory effect makes control sets rather stable with respect to the network time change.
The highest stability is achieved at the monthly scale.
Figure 4(a). Average closeness of drivers (red bars) and average fraction of the aggregate lending accounted for by the driver banks (yellow bars), for the different aggregation time scales. Both values are obtained after averaging over all available network snapshots at the considered time resolution. Maximum closeness is achieved for the monthly network. (b). The fraction of top lender banks which are also drivers of the network: not only the drivers are not hubs, they are not even the larger banks, especially at wider aggregation scales.