Covariance and correlation are two widespread tools in statistics and finance to measure how two entities vary together. Correlation measures the linear relationship between two variables and is not an adequate measure when the two exhibit nonlinear relationships. In this paper, we extend linear correlation to an α-grade monomial one; α values that maximize correlation indicate which type of nonlinear relationship data exhibit. Lagrange representation allows us to define a contro-correlation measure to represent how two entities are not related and a measure of relative variability. Finally, a simulation study and a real-world data application are performed to assess the performance of the proposed methodology.

Nonlinear relative dynamics / R. Bramante, G. Dallago, S. Facchinetti. - In: EUROPEAN JOURNAL OF FINANCE. - ISSN 1351-847X. - 26:13(2020), pp. 1301-1314. ( 10. Portuguese Finance Network Conference Lisboa 2018) [10.1080/1351847X.2020.1742757].

Nonlinear relative dynamics

S. Facchinetti
Ultimo
2020

Abstract

Covariance and correlation are two widespread tools in statistics and finance to measure how two entities vary together. Correlation measures the linear relationship between two variables and is not an adequate measure when the two exhibit nonlinear relationships. In this paper, we extend linear correlation to an α-grade monomial one; α values that maximize correlation indicate which type of nonlinear relationship data exhibit. Lagrange representation allows us to define a contro-correlation measure to represent how two entities are not related and a measure of relative variability. Finally, a simulation study and a real-world data application are performed to assess the performance of the proposed methodology.
nonlinear relationships; covariance; correlation
Settore STAT-01/A - Statistica
2020
Instituto Universitario de Lisboa
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1205445
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