Machine learning techniques for cross-sectional equity returns’ prediction

被引:0
|
作者
Christian Fieberg
Daniel Metko
Thorsten Poddig
Thomas Loy
机构
[1] University of Bremen,Empirical Capital Market Research and Derivatives
[2] University of Luxembourg,Chair of Finance
[3] Concordia University,Management Accounting and Information Systems
[4] University of Bremen,undefined
[5] University of Bremen,undefined
来源
OR Spectrum | 2023年 / 45卷
关键词
Machine learning; Finance; Stock return prediction;
D O I
暂无
中图分类号
学科分类号
摘要
We compare the performance of the linear regression model, which is the current standard in science and practice for cross-sectional stock return forecasting, with that of machine learning methods, i.e., penalized linear models, support vector regression, random forests, gradient boosted trees and neural networks. Our analysis is based on monthly data on nearly 12,000 individual stocks from 16 European economies over almost 30 years from 1990 to 2019. We find that the prediction of stock returns can be decisively improved through machine learning methods. The outperformance of individual (combined) machine learning models over the benchmark model is approximately 0.6% (0.7%) per month for the full cross-section of stocks. Furthermore, we find no model breakdowns, which suggests that investors do not incur additional risk from using machine learning methods compared to the traditional benchmark approach. Additionally, the superior performance of machine learning models is not due to substantially higher portfolio turnover. Further analyses suggest that machine learning models generate their added value particularly in bear markets when the average investor tends to lose money. Our results indicate that future research and practice should make more intensive use of machine learning techniques with respect to stock return prediction.
引用
收藏
页码:289 / 323
页数:34
相关论文
共 50 条
  • [1] Machine learning techniques for cross-sectional equity returns' prediction
    Fieberg, Christian
    Metko, Daniel
    Poddig, Thorsten
    Loy, Thomas
    OR SPECTRUM, 2023, 45 (01) : 289 - 323
  • [2] Debt Covenants and Cross-Sectional Equity Returns
    Helwege, Jean
    Huang, Jing-Zhi
    Wang, Yuan
    MANAGEMENT SCIENCE, 2017, 63 (06) : 1835 - 1854
  • [3] The joint cross-sectional variation of equity returns and volatilities
    Gonzalez-Urteaga, Ana
    Rubio, Gonzalo
    JOURNAL OF BANKING & FINANCE, 2017, 75 : 17 - 34
  • [4] The conditional equity premium, cross-sectional returns and stochastic volatility
    Fung, Ka Wai Terence
    Lau, Chi Keung Marco
    Chan, Kwok Ho
    ECONOMIC MODELLING, 2014, 38 : 316 - 327
  • [5] Prediction of stock returns based on cross-sectional multivariable model
    Yamada S.
    Takahashi S.
    Funabashi M.
    IEEJ Transactions on Electronics, Information and Systems, 2011, 131 (02) : 451 - 460
  • [6] Cross-sectional expected returns: new Fama-MacBeth regressions in the era of machine learning
    Han, Yufeng
    He, Ai
    Rapach, David E.
    Zhou, Guofu
    REVIEW OF FINANCE, 2024, 28 (06) : 1807 - 1831
  • [7] A Cross-Sectional Machine Learning Approach for Hedge Fund Return Prediction and Selection
    Wu, Wenbo
    Chen, Jiaqi
    Yang, Zhibin
    Tindall, Michael L.
    MANAGEMENT SCIENCE, 2021, 67 (07) : 4577 - 4601
  • [8] COMPARISON OF MACHINE LEARNING ALGORITHMS FOR THE PREDICTION OF MISSING CROSS-SECTIONAL COST DATA
    Rueda, J.
    Valencia, C. F.
    Mullins, C. D.
    Onukwugha, E.
    Zhan, M.
    Slejko, J. F.
    VALUE IN HEALTH, 2018, 21 : S4 - S4
  • [9] Machine learning private equity returns
    Tausch, Christian
    Pietz, Marcus
    JOURNAL OF FINANCE AND DATA SCIENCE, 2024, 10
  • [10] Measuring time dependent volatility and cross-sectional correlation in Australian equity returns
    Bertram, William K.
    PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2008, 387 (13) : 3183 - 3191