Forecasting high-frequency excess stock returns via data analytics and machine learning
Date
2021-11-23
Editor(s)
Advisor
Supervisor
Co-Advisor
Co-Supervisor
Instructor
Source Title
European Financial Management
Print ISSN
1354-7798
Electronic ISSN
Publisher
Wiley-Blackwell Publishing Ltd.
Volume
Early View
Issue
Pages
1 - 54
Language
English
Type
Journal Title
Journal ISSN
Volume Title
Usage Stats
19
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13
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Abstract
Borsa Istanbul introduced data analytics to present additional information about its market conditions. We examine whether this product can be utilized via various machine learning methods to predict intraday excess returns. Accordingly, these analytics provide significant prediction ratios above 50% with ideal profit ratios that can reach up to 33%. Among all the methods considered, XGBoost (logistic regression) performs better in predicting excess returns in the long-term analysis (short-term analysis). Results provide evidence for the benefits of both the analytics and the machine learning methods and raise further discussion on the semistrong market efficiency.