Citation link:
Publisher DOI: https://doi.org/10.3905/jfds.2023.1.139
https://media.suub.uni-bremen.de/handle/elib/7567
Publisher DOI: https://doi.org/10.3905/jfds.2023.1.139

Predicting Returns with Machine Learning across Horizons, Firm Size, and Time
Authors: | Cakici, Nusret ![]() Fieberg, Christian ![]() Metko, Daniel Zaremba, Adam ![]() |
Abstract: | Researchers and practitioners hope that machine learning strategies will deliver better performance than traditional methods. But do they? This study documents that stock return predictability with machine learning depends critically on three dimensions: forecast horizon, firm size, and time. It works well for short-term returns, small firms, and early historical data; however, it disappoints in opposite cases. Consequently, annual return forecasts have failed to produce substantial economic gains within most of the US market in the past two decades. These findings challenge the practical utility of predicting returns with machine learning models. |
Issue Date: | 2023 |
Publisher: | Pageant Media |
Journal/Edited collection: | The Journal of Financial Data Science |
Issue: | 4 |
Start page: | 119 |
End page: | 144 |
Volume: | 5 |
Type: | Artikel/Aufsatz |
ISSN: | 2640-3943 |
Institution: | Hochschule Bremen |
Faculty: | Hochschule Bremen - Fakultät 1: Wirtschaftswissenschaften - School of International Business (SiB) |
Appears in Collections: | Bibliographie HS Bremen |
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