Asset Allocation via Machine Learning

Zhenning Hong, Ruyan Tian, Qing Yang, Weiliang Yao, Tingting Ye, Liangliang Zhang

Abstract


In this paper, we document a novel machine learning-based numerical framework to solve static and dynamic portfolio optimization problems, with, potentially, an extremely large number of assets. The framework proposed applies to general constrained optimization problems and overcomes many major difficulties arising in current literature. We not only empirically test our methods in U.S. and China A-share equity markets, but also run a horse-race comparison of some optimization schemes documented in (Homescu, 2014). We record significant excess returns, relative to the selected benchmarks, in both U.S. and China equity markets using popular schemes solved by our framework, where the conditional expected returns are obtained via machine learning regression, inspired by (Gu, Kelly & Xiu, 2020) and (Leippold, Wang & Zhou, 2021), of future returns on pricing factors carefully chosen.

Full Text:

PDF


DOI: https://doi.org/10.5430/afr.v10n4p34

Refbacks

  • There are currently no refbacks.


Copyright (c) 2021 Zhenning Hong, Ruyan Tian, Qing Yang, Weiliang Yao, Tingting Ye, Liangliang Zhang

Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.

Accounting and Finance Research
ISSN 1927-5986 (Print)   ISSN 1927-5994 (Online) Email: afr@sciedupress.com

Copyright © Sciedu Press

To make sure that you can receive messages from us, please add the 'Sciedupress.com' domain to your e-mail 'safe list'. If you do not receive e-mail in your 'inbox', check your 'bulk mail' or 'junk mail' folders.