利用时间序列分析和机器学习预测印尼股票价格

Fajar Dwi Wibowo, Thanh-Tuan Dang, Chia-Nan Wang
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引用次数: 0

摘要

本研究使用R中的时间序列分析和机器学习,研究了预测联合利华印度尼西亚股票价格和Telekomunikasi印度尼西亚股票价格提前30天的合适模型,时间序列预测是学习数据科学的一种有趣的方式。数据格式为收盘价。这个项目的目标是使用各种预测预测模型来预测联合利华印度尼西亚和telekomunikasi印度尼西亚的未来股价,然后对各种模型进行分析。联合利华股票的数据集是使用r中的Quantmod软件包从雅虎财经获得的。最后的结果对比表明,使用arima和神经网络方法产生了很好的精度值。对股票价格的研究和分析将帮助投资者进行更准确的投资,投资者可以确定将采取什么步骤,无论是购买股票还是出售收购股票的正确步骤采取行动。本研究中使用arima预测联合利华印度尼西亚收盘价的数据模型的准确率为98.87%。而采用神经网络模型的准确率为98.92%。Telekomunikasi Indonesia使用arima的准确率为98.74%。神经网络模型的准确率为98.77%,为进一步的研究和开发提供了建议。尝试在现有历史数据的基础上增加更完整的数据,从而提高预测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FORECASTING INDONESIA STOCK PRICE USING TIME SERIES ANALYSIS AND MACHINE LEARNING IN R
This study investigated the appropriate model to predict 30 days ahead of Unilever Indonesia stock price and Telekomunikasi Indonesia stock price using time series analysis and machine learning in R, time series forecasting is a fun and interesting way to learn data science. The data is format Close Price. The goal of this project is to predict the future stock price of unilever indonesia and telekomunikasi indonesia using various predictive forecasting models and then analyze the various models. The dataset for unilever stocks is obtained from yahoo finance using Quantmod package in R. The final results that have been compared show that using the arima and neural network methods produces good accuracy values. Research and analysis of stock prices will help investors carry out investment is more accurate, investors can determine what steps will be taken, either buying a share or selling acquired shares the right step in taking an action. The data model used to predict close stock prices in this study unilever Indonesia using arima has an accuracy of 98.87%. and using neural network model has an of 98.92%. Telekomunikasi Indonesia using arima has an accuracy of 98.74%. and using neural network Model has an accuracy of 98.77% there are suggestions that can be given for further research and development. Trying to add to the existing historical data to be more complete so as to improve the accuracy of forecasting.
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