Identifying Patterns in Financial Markets: Extending the Statistical Jump Model for Regime Identification

Annals of Operations Research, 0[10.1007/s10479-024-06035-z]

37 Pages Posted: 7 Sep 2023 Last revised: 12 Nov 2024

See all articles by Afsar Onat Aydinhan

Afsar Onat Aydinhan

Princeton University - Department of Operations Research & Financial Engineering (ORFE)

Petter N. Kolm

New York University (NYU) - Courant Institute of Mathematical Sciences

John M. Mulvey

Princeton University - Bendheim Center for Finance

Yizhan Shu

Princeton University - Department of Operations Research & Financial Engineering (ORFE)

Date Written: March 20, 2024

Abstract

Regime-driven models are popular for addressing temporal patterns in both financial market performance and underlying stylized factors, wherein a regime describes a period with relatively homogeneous behavior. Recently, statistical jump models have been proposed to learn regimes with high persistence, based on clustering temporal features while explicitly penalizing jumps across regimes. In this article, we extend the jump model by generalizing the discrete hidden state variable into a probability vector over all regimes. This allows us to estimate the probability of being in each regime, providing valuable information for downstream tasks such as regime-aware portfolio models and risk management. Our model’s smooth transition from one regime to another enhances robustness over the original discrete model. We provide a probabilistic interpretation of our continuous model and demonstrate its advantages through simulations and real-world data experiments. The interpretation motivates a novel penalty term, called mode loss, which pushes the probability estimates to the vertices of the probability simplex thereby improving the model’s ability to identify regimes. We demonstrate through a series of empirical and real world tests that the approach outperforms traditional regime-switching models. This outperformance is pronounced when the regimes are unbalanced and historical data is limited, both common in financial markets.

Keywords: Regime Switching; Temporal Clustering; Statistical Jump Models; Probabilistic Modeling; Times Series; Unsupervised Learning

Suggested Citation

Aydinhan, Afsar Onat and Kolm, Petter N. and Mulvey, John M. and Shu, Yizhan, Identifying Patterns in Financial Markets: Extending the Statistical Jump Model for Regime Identification (March 20, 2024). Annals of Operations Research, 0[10.1007/s10479-024-06035-z], Available at SSRN: https://ssrn.com/abstract=4556048 or http://dx.doi.org/10.1007/s10479-024-06035-z

Afsar Onat Aydinhan

Princeton University - Department of Operations Research & Financial Engineering (ORFE) ( email )

Sherrerd Hall, Charlton Street
Princeton, NJ 08544
United States

Petter N. Kolm

New York University (NYU) - Courant Institute of Mathematical Sciences ( email )

251 Mercer Street
New York, NY 10012
United States

John M. Mulvey

Princeton University - Bendheim Center for Finance ( email )

26 Prospect Avenue
Princeton, NJ 08540
United States

Yizhan Shu (Contact Author)

Princeton University - Department of Operations Research & Financial Engineering (ORFE) ( email )

Sherrerd Hall, Charlton Street
Princeton, NJ 08544
United States

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