Testing for Predictability in Financial Returns Using Statistical Learning Procedures
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"Forecasting realized volatility: Does anything beat linear models?,"
Journal of Empirical Finance, Elsevier, vol. 78(C).
- Rafael Branco & Alexandre Rubesam & Mauricio Zevallos, 2024. "Forecasting realized volatility: Does anything beat linear models?," Post-Print hal-04835657, HAL.
- Söhnke M. Bartram & Jürgen Branke & Mehrshad Motahari, 2020.
"Artificial intelligence in asset management,"
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- Bartram, Söhnke & Branke, Jürgen & Motahari, Mehrshad, 2020. "Artificial Intelligence in Asset Management," CEPR Discussion Papers 14525, C.E.P.R. Discussion Papers.
- Manuel Nunes & Enrico Gerding & Frank McGroarty & Mahesan Niranjan, 2020. "Long short-term memory networks and laglasso for bond yield forecasting: Peeping inside the black box," Papers 2005.02217, arXiv.org.
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