2023
DOI: 10.31004/jutin.v6i4.17726
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Impurity-Based Important Features for feature selection in Recursive Feature Elimination for Stock Price Forecasting

Arif Mudi Priyatno,
Wahyu Febri Sudirman,
R. Joko Musridho
et al.

Abstract: Stock investors perform stock price forecasting based on technical indicators and historical stock prices. The large number of technical indicators and historical data often leads to overfitting and ambiguity in forecasting using machine learning. In this paper, we proposed a feature selection approach using impurity-based important features in recursive feature elimination for stock price forecasting. The data utilized includes historical data and various moving averages. Feature selection is employed to redu… Show more

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