采用集合方法预测股市:Nifty50 指数

Chinthakunta Manjunath, Balamurugan Marimuthu, Bikramaditya Ghosh
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引用次数: 0

摘要

准确预测股票波动可以获得高投资回报,同时将风险降至最低。然而,市场波动使得这些预测不太可能实现。因此,股票市场数据分析对研究意义重大。分析师和研究人员开发了各种股价预测系统,帮助投资者做出明智的判断。大量研究表明,机器学习可以通过检查股票数据来预测市场。本文提出并评估了不同的集合学习技术,如最大投票、bagging、boosting 和 stacking,以有效预测 Nifty50 指数。此外,还进行了嵌入式特征选择,以选择一组最佳的基本指标作为模型的输入,并使用网格搜索对每个基本回归器进行了广泛的超参数调整,以提高性能。我们的研究结果表明,采用随机森林(RF)特征选择的装袋和堆叠集合模型误差率较低。装袋和堆叠回归模型 2 的表现优于所有其他模型,其均方根误差(RMSE)分别为 0.0084 和 0.0085,最低,表明集合回归模型的拟合度更高。最后,研究结果表明,机器学习算法可以帮助基本面分析做出股票投资决策。
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Stock market prediction employing ensemble methods: the Nifty50 index
Accurately forecasting stock fluctuations can yield high investment returns while minimizing risk. However, market volatility makes these projections unlikely. As a result, stock market data analysis is significant for research. Analysts and researchers have developed various stock price prediction systems to help investors make informed judgments. Extensive studies show that machine learning can anticipate markets by examining stock data. This article proposed and evaluated different ensemble learning techniques such as max voting, bagging, boosting, and stacking to forecast the Nifty50 index efficiently. In addition, an embedded feature selection is performed to choose an optimal set of fundamental indicators as input to the model, and extensive hyperparameter tuning is applied using grid search to each base regressor to enhance performance. Our findings suggest the bagging and stacking ensemble models with random forest (RF) feature selection offer lower error rates. The bagging and stacking regressor model 2 outperformed all other models with the lowest root mean square error (RMSE) of 0.0084 and 0.0085, respectively, showing a better fit of ensemble regressors. Finally, the findings show that machine learning algorithms can help fundamental analyses make stock investment decisions.
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