Hybrid Autoregressive Integrated Moving Average-Support Vector Regression for Stock Price Forecasting

None Hanan Albarr, None Rosita Kusumawati
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Abstract

Stock investment provides high-profit opportunities but also has a high risk of loss. Investors use various decision-making methods to minimize this risk, such as stock price forecasting. This research aims to predict daily closing stock prices using a hybrid Autoregressive Integrated Moving Average (ARIMA)-Support Vector Regression (SVR) model and compare it with the single model of ARIMA and SVR, as well as compiling the R-shiny web for the hybrid ARIMA-SVR model which makes it easier for investors to use the model to support investment decision making. The hybrid ARIMA-SVR model is composed of two components: the linear component from the results of stock price forecasting using the Autoregressive Integrated Moving Average (ARIMA) model and the nonlinear components from the residual forecasting results of the ARIMA model using the Support Vector Regression (SVR) model. The data used was closing stock price data from April 1, 2019, to April 1, 2021, from PT Unilever Indonesia Tbk (UNVR.JK), PT Perusahaan Gas Negara Tbk (PGAS.JK), and PT Telekomunikasi Indonesia Tbk (TLKM.JK), from the Yahoo Finance website. The research results conclude that the hybrid ARIMA-SVR model has excellent capabilities in forecasting stock prices with the MAPE values ​​for UNVR, PGAS, and TLKM stocks, respectively of 0.797%, 2.213%, and 0.993%, which are lower than the MAPE values of ARIMA-GARCH and SVR models. The hybrid model can be an alternative model with excellent capabilities in forecasting stock prices.
混合自回归集成移动平均-支持向量回归预测股票价格
股票投资提供了高利润的机会,但也有很高的亏损风险。投资者使用各种决策方法来最小化这种风险,例如股票价格预测。本研究旨在利用自回归综合移动平均(ARIMA)-支持向量回归(SVR)混合模型预测每日收盘价,并与ARIMA和SVR的单一模型进行比较,并为ARIMA-SVR混合模型编制R-shiny网页,使投资者更容易使用该模型来支持投资决策。ARIMA-SVR混合模型由两部分组成:自回归综合移动平均(ARIMA)模型的股价预测结果的线性部分和支持向量回归(SVR)模型的ARIMA模型的残差预测结果的非线性部分。所使用的数据是2019年4月1日至2021年4月1日的收盘价数据,来自雅虎财经网站上的PT Unilever Indonesia Tbk (UNVR.JK)、PT Perusahaan Gas Negara Tbk (PGAS.JK)和PT Telekomunikasi Indonesia Tbk (TLKM.JK)。研究结果表明,ARIMA-SVR混合模型具有较好的股价预测能力,UNVR、PGAS和TLKM股票的MAPE值分别为0.797%、2.213%和0.993%,低于ARIMA-GARCH和SVR模型的MAPE值。混合模型可以作为一种替代模型,具有较好的预测股票价格的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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