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An early-warning risk signals framework to capture systematic risk in financial markets

An early-warning risk signals framework to capture systematic risk in financial markets
An early-warning risk signals framework to capture systematic risk in financial markets
Despite extensive research on the relationship between systematic risk and expected returns, there exists limited knowledge of how early-warning risk signals could capture investors’ expectations about changes in systematic risk. Leveraging on graph theory and covariance matrices, this study proposes a novel framework to develop risk signal patterns. Our approach not only discerns high-risk periods from calmer ones but also elucidates the pivotal role of interconnections among securities as indicators of systematic risk. The findings offer actionable insights for timely portfolio management and risk management responses in periods of transitions towards higher systematic risk. Moreover, by leveraging on graph theory, regulators can take timely decisions about how much liquidity to inject into the markets during periods of uncertainty. This study contributes to the literature by establishing a novel framework on linking investors’ expectations and expected changes in systematic risk.
Covariance matrix, Financial networks, Graph theory, Risk signaling, Systematic risk
1469-7688
757-771
Ciciretti, Vito
e6b12ccd-63bd-444d-986e-8cab021ce6f9
Nandy, Monomita
bd32ea6b-7baf-45d2-9f86-953d0edc2045
Alberto, Pallotta
5a32f3d3-45e8-492c-bd85-574d50d38f54
Lodh, Suman
0c3fe0ce-1de3-4d75-9957-9edce8b81a30
Senyo, P.K.
b2150f66-8ef9-48f7-af32-3b055d4fa691
Kartasova, Jekaterina
d65e4952-f95d-4538-9574-35f84e05d66f
Ciciretti, Vito
e6b12ccd-63bd-444d-986e-8cab021ce6f9
Nandy, Monomita
bd32ea6b-7baf-45d2-9f86-953d0edc2045
Alberto, Pallotta
5a32f3d3-45e8-492c-bd85-574d50d38f54
Lodh, Suman
0c3fe0ce-1de3-4d75-9957-9edce8b81a30
Senyo, P.K.
b2150f66-8ef9-48f7-af32-3b055d4fa691
Kartasova, Jekaterina
d65e4952-f95d-4538-9574-35f84e05d66f

Ciciretti, Vito, Nandy, Monomita, Alberto, Pallotta, Lodh, Suman, Senyo, P.K. and Kartasova, Jekaterina (2025) An early-warning risk signals framework to capture systematic risk in financial markets. Quantitative Finance, 25 (5), 757-771. (doi:10.1080/14697688.2025.2482637).

Record type: Article

Abstract

Despite extensive research on the relationship between systematic risk and expected returns, there exists limited knowledge of how early-warning risk signals could capture investors’ expectations about changes in systematic risk. Leveraging on graph theory and covariance matrices, this study proposes a novel framework to develop risk signal patterns. Our approach not only discerns high-risk periods from calmer ones but also elucidates the pivotal role of interconnections among securities as indicators of systematic risk. The findings offer actionable insights for timely portfolio management and risk management responses in periods of transitions towards higher systematic risk. Moreover, by leveraging on graph theory, regulators can take timely decisions about how much liquidity to inject into the markets during periods of uncertainty. This study contributes to the literature by establishing a novel framework on linking investors’ expectations and expected changes in systematic risk.

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Accepted/In Press date: 14 March 2025
e-pub ahead of print date: 14 April 2025
Published date: 2025
Keywords: Covariance matrix, Financial networks, Graph theory, Risk signaling, Systematic risk

Identifiers

Local EPrints ID: 500379
URI: http://eprints.soton.ac.uk/id/eprint/500379
ISSN: 1469-7688
PURE UUID: 4cd0285b-40ce-4414-af81-db1fc1cb19e0
ORCID for P.K. Senyo: ORCID iD orcid.org/0000-0001-7126-3826

Catalogue record

Date deposited: 28 Apr 2025 16:56
Last modified: 27 Aug 2025 02:04

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Contributors

Author: Vito Ciciretti
Author: Monomita Nandy
Author: Pallotta Alberto
Author: Suman Lodh
Author: P.K. Senyo ORCID iD
Author: Jekaterina Kartasova

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