Predictive intraday correlations in stable and volatile market environments: Evidence from deep learning
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DOI: 10.1016/j.physa.2020.124392
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- Ekaterina Zolotareva, 2021. "Applying Convolutional Neural Networks for Stock Market Trends Identification," Papers 2104.13948, arXiv.org.
- Sadefo Kamdem, Jules & Bandolo Essomba, Rose & Njong Berinyuy, James, 2020.
"Deep learning models for forecasting and analyzing the implications of COVID-19 spread on some commodities markets volatilities,"
Chaos, Solitons & Fractals, Elsevier, vol. 140(C).
- Jules Sadefo-Kamdem & Rose Bandolo Essomba & James Njong Berinyuy, 2020. "Deep learning models for forecasting and analyzing the implications of COVID-19 spread on some commodities markets volatilities," Post-Print hal-02921304, HAL.
- Ekaterina Zolotareva, 2021. "Aiding Long-Term Investment Decisions with XGBoost Machine Learning Model," Papers 2104.09341, arXiv.org.
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Keywords
Econophysics; Deep learning; Financial crisis; Market efficiency; Trend forecasting;All these keywords.
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