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  4. Machine learning goes global: Cross-sectional return predictability in international stock markets
 
Verlagslink DOI
10.1016/j.jedc.2023.104725

Machine learning goes global: Cross-sectional return predictability in international stock markets

Veröffentlichungsdatum
2023
Autoren
Cakici, Nusret  
Fieberg, Christian  
Metko, Daniel  
Zaremba, Adam  
Zusammenfassung
We examine return predictability with machine learning in 46 stock markets around the world. We calculate 148 firm characteristics and use them to feed a repertoire of different models. The algorithms extract predictability mainly from simple yet popular factor types—such as momentum, reversal, value, and size. All individual models generate substantial economic gains; however, combining them proves particularly effective. Despite the overall robustness, the machine learning performance depends heavily on firm size and availability of recent information. Furthermore, it varies internationally along two critical dimensions: the number of listed firms in the market and the average idiosyncratic risk limiting arbitrage.
Schlagwörter
Machine Learning

; 

Return predictability

; 

International stock markets
Verlag
Elsevier Science
Institution
Hochschule Bremen  
Fachbereich
Hochschule Bremen - Fakultät 1: Wirtschaftswissenschaften - School of International Business (SiB)  
Dokumenttyp
Wissenschaftlicher Artikel
Zeitschrift/Sammelwerk
Journal of Economic Dynamics and Control  
Heft
155
Startseite
104725
Sprache
Englisch

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