Tactical Asset Allocation with Macroeconomic Regime Detection

26 Pages Posted: 14 Apr 2025

See all articles by Daniel Oliveira

Daniel Oliveira

University of São Paulo (USP) - Department of Computer Science

Dylan Sandfelder

University of Oxford - Department of Engineering Science; University of Oxford - Oxford-Man Institute of Quantitative Finance

André Fujita

University of São Paulo (USP) - Institute of Mathematics and Statistics (IME)

Xiaowen Dong

University of Oxford - Oxford-Man Institute of Quantitative Finance

Mihai Cucuringu

University of California, Los Angeles (UCLA) - Department of Mathematics; University of Oxford - Department of Statistics

Date Written: March 18, 2025

Abstract

This paper extends the tactical asset allocation literature by incorporating regime modeling using techniques from machine learning. We propose a novel model that classifies current regimes, forecasts the distribution of future regimes, and integrates these forecasts with the historical performance of individual assets to optimize portfolio allocations. Utilizing a macroeconomic data set from the FRED-MD database, our approach employs a modified k-means algorithm to ensure consistent regime classification over time. We then leverage these regime predictions to estimate expected returns and volatilities, which are subsequently mapped into portfolio allocations using various sizing schemes. Our method outperforms traditional benchmarks such as equal-weight, buy-and-hold, and random regime models. Additionally, we are the first to apply a regime detection model from a large macroeconomic dataset to tactical asset allocation, demonstrating significant improvements in portfolio performance. Our work presents several key contributions, including a novel data-driven regime detection algorithm tailored for uncertainty in forecasted regimes and applying the FRED-MD data set for tactical asset allocation.

Keywords: Tactical Allocation, Regime Detection, Market Analysis, Time Series

Suggested Citation

Oliveira, Daniel and Sandfelder, Dylan and Fujita, André and Dong, Xiaowen and Cucuringu, Mihai, Tactical Asset Allocation with Macroeconomic Regime Detection (March 18, 2025). Available at SSRN: https://ssrn.com/abstract=5183762 or http://dx.doi.org/10.2139/ssrn.5183762

Daniel Oliveira

University of São Paulo (USP) - Department of Computer Science ( email )

Brazil

Dylan Sandfelder (Contact Author)

University of Oxford - Department of Engineering Science ( email )

Mansfield Road
Oxford, Oxfordshire OX1 4AU
United Kingdom

University of Oxford - Oxford-Man Institute of Quantitative Finance ( email )

Eagle House
Walton Well Road
Oxford, Oxfordshire OX2 6ED
United Kingdom

André Fujita

University of São Paulo (USP) - Institute of Mathematics and Statistics (IME) ( email )

Sao Paulo
Brazil

Xiaowen Dong

University of Oxford - Oxford-Man Institute of Quantitative Finance ( email )

Eagle House
Walton Well Road
Oxford, Oxfordshire OX2 6ED
United Kingdom

Mihai Cucuringu

University of California, Los Angeles (UCLA) - Department of Mathematics

UCLA Mathematical Sciences Building
520 Portola Plaza
Los Angeles, CA 90095
United States

HOME PAGE: http://www.math.ucla.edu/~mihai/

University of Oxford - Department of Statistics

24-29 St Giles
Oxford
United Kingdom

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