Feature Engineering Methods on Multivariate Time-Series Data for Financial Data Science Competitions

03/26/2023
by   Thomas Wong, et al.
0

We apply different feature engineering methods for time-series to US market price data. The predictive power of models are tested against Numerai-Signals targets.

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