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Modeling and Forecasting Intraday Market Returns: a Machine Learning Approach

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arxiv 2112.15108 v1 pith:6C5AP5E6 submitted 2021-12-30 econ.EM

Modeling and Forecasting Intraday Market Returns: a Machine Learning Approach

classification econ.EM
keywords intradaymarketreturnsestimationlearninglstmmachinemethod
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper we examine the relation between market returns and volatility measures through machine learning methods in a high-frequency environment. We implement a minute-by-minute rolling window intraday estimation method using two nonlinear models: Long-Short-Term Memory (LSTM) neural networks and Random Forests (RF). Our estimations show that the CBOE Volatility Index (VIX) is the strongest candidate predictor for intraday market returns in our analysis, specially when implemented through the LSTM model. This model also improves significantly the performance of the lagged market return as predictive variable. Finally, intraday RF estimation outputs indicate that there is no performance improvement with this method, and it may even worsen the results in some cases.

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