Investigating the configurations in cross-shareholding: a joint copula-entropy approach
Roy Cerqueti (Macerata), Giulia Rotundo (Roma), and Marcel Ausloos, (Leicester)

TL;DR
This paper models market concentration through a directed network of companies, analyzing the dependence between diversification and integration using copulas and entropy measures to inform regulatory policies.
Contribution
It introduces a copula-entropy framework to study the dependence structure of cross-shareholding networks, linking market concentration with network degree distributions.
Findings
Dependence structures influence market polarization and fairness.
Calibrated copula models fit real market data.
Insights for regulatory thresholds and market concentration control.
Abstract
--- the companies populating a Stock market, along with their connections, can be effectively modeled through a directed network, where the nodes represent the companies, and the links indicate the ownership. This paper deals with this theme and discusses the concentration of a market. A cross-shareholding matrix is considered, along with two key factors: the node out-degree distribution which represents the diversification of investments in terms of the number of involved companies, and the node in-degree distribution which reports the integration of a company due to the sales of its own shares to other companies. While diversification is widely explored in the literature, integration is most present in literature on contagions. This paper captures such quantities of interest in the two frameworks and studies the stochastic dependence of diversification and integration through a copula…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Innovation Diffusion and Forecasting · Complex Network Analysis Techniques
