2024
DOI: 10.11591/ijece.v14i2.pp1906-1915
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Feature selection using non-parametric correlations and important features on recursive feature elimination for stock price prediction

Arif Mudi Priyatno,
Wahyu Febri Ramadhan Sudirman,
Raja Joko Musridho

Abstract: Stock price prediction using machine learning is a rapidly growing area of research. However, the large number of features that can be used can complicate the learning process. The feature selection method that can be used to overcome this problem is recursive feature elimination. Standard recursive feature elimination carries the risk of producing inaccurate algorithms because the top-ranked features are not necessarily the most important features. This research proposes a feature selection method that combin… Show more

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Cited by 2 publications
(1 citation statement)
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“…In the realm of financial market forecasting, the integration of machine learning techniques has emerged as a pivotal strategy for enhancing the accuracy of stock price predictions. Priyatno et al [8] introduced a novel feature selection approach that leverages non-parametric correlations and important features within recursive feature elimination for stock price prediction. Their research underscores the complexities inherent in the vast array of potential features, proposing a method that surpasses standard recursive feature elimination by incorporating a strategic combination of important features and non-parametric correlations.…”
Section: Introductionmentioning
confidence: 99%
“…In the realm of financial market forecasting, the integration of machine learning techniques has emerged as a pivotal strategy for enhancing the accuracy of stock price predictions. Priyatno et al [8] introduced a novel feature selection approach that leverages non-parametric correlations and important features within recursive feature elimination for stock price prediction. Their research underscores the complexities inherent in the vast array of potential features, proposing a method that surpasses standard recursive feature elimination by incorporating a strategic combination of important features and non-parametric correlations.…”
Section: Introductionmentioning
confidence: 99%