基于SARIMA和XGBoost杂交的股票价格分析与预测

Deepak Kumar, Thiruvarangan B C, Sai Nikhil Reddy C, Vishnu A, A. Devi, D. Kavitha
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引用次数: 5

摘要

在证券交易领域,为了准确预测公开上市股票的价格,许多投资者使用预测技术来决定何时投资和投资哪只股票。一般来说,公开上市股票价格的预测是在机器学习的帮助下完成的,它考虑了现在和过去的价格数据。使用各种算法预测股票价格是可能的,但是,由于公开上市股票价格的波动性和不可预测的行为,数据挖掘统计或非深度神经网络等标准技术不太可能适合这项任务。雅虎财经(Yahoo Finance) 10年的股票数据集被用来使用应用各种算法的机器学习来估计价值。使用基于SARIMA和XGBoost的机器学习预测公开交易股票的价值是本研究的主题。SARIMA模型与ARIMA模型类似,在预测股票市场时,季节性因素在SARIMA模型中起着重要作用。在XGBoost中,开盘、调整后的收盘价格、峰值、低点和总交易量都被考虑在内,XGBoost是一种梯度增强决策树的实现,针对速度和性能进行了优化。与标准预测方法相比,SARIMA XGBoost混合模型的预测准确率为89.48%,平均绝对误差(MAE)为15.612,平均绝对百分比误差(MAPE)为10.52%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Prediction of Stock Price Using Hybridization of SARIMA and XGBoost
In the field of stock exchange, to accurately forecast the publicly listed stocks price exchange where many investors use prediction techniques to decide when to invest their money and in which stock they have to invest. Generally, the forecast of publicly listed stock prices is done with the assistance of machine learning where it takes into account the present as well as the past price data. It is possible to anticipate stock prices using a variety of algorithms, however standard techniques like data mining statistical or non-deep neural networks are not likely suited to the task because of the volatility and unpredictable behavior of publicly listed stock prices. A stock data set of ten years from Yahoo Finance was used to estimate the values using machine learning that applies a variety of algorithms. Predicting the value of publicly traded stocks using machine learning based on SARIMA and XGBoost is the topic of this study. When predicting the stock market, seasonality plays an important part in the SARIMA model, which is similar to an ARIMA model. Open, adjusted end of the day price, day's peak, day's low, and total volume are all taken into account in XGBoost, an implementation of gradient boosted decision trees optimized for speed and performance. As compared to standard forecasting approaches, the suggested SARIMA XGBoost hybrid model shows Accuracy of 89.48%, Mean Absolute Error (MAE) of 15.612 and Mean Absolute Percentage Error (MAPE) of 10.52%
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