Network models represent a useful tool to describe the complex set of financial relationships among heterogeneous firms in the system. A new Bayesian semiparametric model for temporal multilayer networks with both intra- and inter-layer connectivity is proposed. A hierarchical mixture prior distribution is assumed to capture heterogeneity in the response of the network edges to a set of risk factors including the number of COVID-19 cases in Europe. Two layers, defined by stock returns and volatilities are considered and within and between layers connectivity is investigated. The financial connectedness arising from the interactions between two layers is measured. The model is applied in order to compare the topology of the network before and after the spreading of the COVID-19 disease.

COVID-19 spreading in financial networks: A semiparametric matrix regression model / Billio, M.; Casarin, R.; Costola, M.; Iacopini, Matteo. - In: ECONOMETRICS AND STATISTICS. - ISSN 2452-3062. - 29:(2024), pp. 113-131. [10.1016/j.ecosta.2021.10.003]

COVID-19 spreading in financial networks: A semiparametric matrix regression model

Iacopini M.
2024

Abstract

Network models represent a useful tool to describe the complex set of financial relationships among heterogeneous firms in the system. A new Bayesian semiparametric model for temporal multilayer networks with both intra- and inter-layer connectivity is proposed. A hierarchical mixture prior distribution is assumed to capture heterogeneity in the response of the network edges to a set of risk factors including the number of COVID-19 cases in Europe. Two layers, defined by stock returns and volatilities are considered and within and between layers connectivity is investigated. The financial connectedness arising from the interactions between two layers is measured. The model is applied in order to compare the topology of the network before and after the spreading of the COVID-19 disease.
2024
COVID-19
Financial markets
Multilayer networks
COVID-19 spreading in financial networks: A semiparametric matrix regression model / Billio, M.; Casarin, R.; Costola, M.; Iacopini, Matteo. - In: ECONOMETRICS AND STATISTICS. - ISSN 2452-3062. - 29:(2024), pp. 113-131. [10.1016/j.ecosta.2021.10.003]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11385/242504
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