Logo image
Mean-Variance Efficient Large Portfolios: A Simple Machine Learning Heuristic Technique based on the Two-Fund Separation Theorem
Journal article   Open access   Peer reviewed

Mean-Variance Efficient Large Portfolios: A Simple Machine Learning Heuristic Technique based on the Two-Fund Separation Theorem

Michele Costola, Bertrand Maillet, Zhining Yuan and Xiang Zhang
Annals of Operations Research, Vol.334(1-3), pp.133-155
01/03/2024

Abstract

mean-variance efficient portfolios Two-Fund Separation Theorem Machine learning Robust portfolio High-dimensional Portfolios
We revisit in this article the Two-Fund Separation Theorem as a simple technique for the Mean-Variance optimization of large portfolios. The proposed approach is fast and scalable and provides equivalent results of commonly used ML techniques but, with computing time differences counted in hours (1 minute versus several hours). In the empirical application, we consider three geographic areas (China, US, and French stock markets) and show that the Two-Fund Separation Theorem holds exactly when no constraints are imposed and is approximately true with (realistic) positive constraints on weights. This technique is shown to be of interest to both scholars and practitioners involved in portfolio optimization tasks.
pdf
AOR_Maillet_FORTHDownloadView
Open Access
url
https://doi.org/10.1007/s10479-022-04881-3View
Published (Version of record) Open

Metrics

207 File views/ downloads
32 Record Views

Details

InCites Highlights

These are selected metrics from InCites Benchmarking & Analytics tool, related to this contribution

Collaboration types
Domestic collaboration
International collaboration
Citation topics
6 Social Sciences
6.10 Economics
6.10.80 Market Interdependencies
Web of Science research areas
Operations Research & Management Science
Logo image