In this paper, we propose an outlier detection algorithm for multivariate data based on their projections on the directions that maximize the Cumulant Generating Function (CGF). We prove that CGF is a convex function, and we characterize the CGF maximization problem on the unit -circle as a concave minimization problem. Then, we show that the CGF maximization approach can be interpreted as an extension of the standard principal component technique. Therefore, for validation and testing, we provide a thorough comparison of our methodology with two other projection-based approaches both on artificial and real-world financial data. Finally, we apply our method as an early detector for financial crises.

Cesarone, F., Giacometti, R., Ricci, J.M. (2024). Outlier detection of multivariate data via the maximization of the cumulant generating function. JOURNAL OF COMPUTATIONAL AND APPLIED MATHEMATICS, 1-33 [10.1016/j.cam.2024.116457].

Outlier detection of multivariate data via the maximization of the cumulant generating function

Francesco Cesarone
;
Rosella Giacometti;Jacopo Maria Ricci
2024-01-01

Abstract

In this paper, we propose an outlier detection algorithm for multivariate data based on their projections on the directions that maximize the Cumulant Generating Function (CGF). We prove that CGF is a convex function, and we characterize the CGF maximization problem on the unit -circle as a concave minimization problem. Then, we show that the CGF maximization approach can be interpreted as an extension of the standard principal component technique. Therefore, for validation and testing, we provide a thorough comparison of our methodology with two other projection-based approaches both on artificial and real-world financial data. Finally, we apply our method as an early detector for financial crises.
2024
Cesarone, F., Giacometti, R., Ricci, J.M. (2024). Outlier detection of multivariate data via the maximization of the cumulant generating function. JOURNAL OF COMPUTATIONAL AND APPLIED MATHEMATICS, 1-33 [10.1016/j.cam.2024.116457].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11590/495660
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