Predicting Foreign Exchange EUR/USD direction using machine learning
The Foreign Exchange market is a significant market for speculators, characterized by substantial transaction volumes and high volatility. Accurately predicting the directional movement of currency pairs is essential for formulating a sound financial investment strategy. This paper conducts a compar...
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Zusammenfassung: | The Foreign Exchange market is a significant market for speculators,
characterized by substantial transaction volumes and high volatility.
Accurately predicting the directional movement of currency pairs is essential
for formulating a sound financial investment strategy. This paper conducts a
comparative analysis of various machine learning models for predicting the
daily directional movement of the EUR/USD currency pair in the Foreign Exchange
market. The analysis includes both decorrelated and non-decorrelated feature
sets using Principal Component Analysis. Additionally, this study explores
meta-estimators, which involve stacking multiple estimators as input for
another estimator, aiming to achieve improved predictive performance.
Ultimately, our approach yielded a prediction accuracy of 58.52% for one-day
ahead forecasts, coupled with an annual return of 32.48% for the year 2022. |
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DOI: | 10.48550/arxiv.2409.04471 |