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Application of supervised learning models in the Chinese futures market

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  • Fuquan Tang

Abstract

Based on the characteristics of the Chinese futures market, this paper builds a supervised learning model to predict the trend of futures prices and then designs a trading strategy based on the prediction results. The Precision, Recall and F1-score of the classification problem show that our model can meet the accuracy requirements for the classification of futures price movements in terms of test data. The backtest results show that our trading system has an upward trending return curve with low capital retracement.

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  • Fuquan Tang, 2023. "Application of supervised learning models in the Chinese futures market," Papers 2303.04581, arXiv.org.
  • Handle: RePEc:arx:papers:2303.04581
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