Technical Analysis Based Automatic Trading Prediction System for Stock Exchange using Support Vector Machine

IF 0.4 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC EMITTER-International Journal of Engineering Technology Pub Date : 2022-12-28 DOI:10.24003/emitter.v10i2.740
I. Agusta, Ali Ridho Barakbah, A. Fariza
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引用次数: 0

Abstract

Stock exchange trading has been utilized to gain profit by constantly buying and selling best-performing stocks in a short term. Deep knowledge, time dedication, and experience are essential for optimizing profit if stock price fluctuations are analyzed manually. This research proposes a new trading prediction system that has the ability to automatically predict the accurate time for buying and selling stock using a combination of technical analysis and support vector machine (SVM). Technical analysis is used to analyze stock price fluctuation based on historical data by utilizing technical indicators such as moving average, Bollinger bands, relative strength index, stochastic oscillator, and Aroon oscillator. SVM maps inputs into higher dimensional spaces using non-linear kernel functions, making it suitable for various technical indicators implementation as inputs in stock trading prediction. Experimentation on five Indonesian stocks reveals that the combination of technical analysis and support vector machine is best suited for continuously fluctuated stocks, with the highest accuracy of 77.8%.
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基于技术分析的支持向量机证券交易自动预测系统
证券交易所交易已经被用来通过在短期内不断买卖表现最好的股票来获得利润。如果手工分析股票价格波动,深入的知识、时间投入和经验对于优化利润是必不可少的。本文提出了一种新的交易预测系统,该系统将技术分析与支持向量机(SVM)相结合,能够自动预测准确的股票买卖时间。技术分析是利用移动平均线、布林带、相对强弱指标、随机振荡指标、阿龙振荡指标等技术指标,以历史数据为基础,分析股票价格波动的方法。支持向量机使用非线性核函数将输入映射到高维空间,使其适用于各种技术指标作为股票交易预测的输入实现。对5只印度尼西亚股票的实验表明,技术分析与支持向量机相结合最适合连续波动股票,准确率最高达77.8%。
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来源期刊
EMITTER-International Journal of Engineering Technology
EMITTER-International Journal of Engineering Technology ENGINEERING, ELECTRICAL & ELECTRONIC-
自引率
0.00%
发文量
7
审稿时长
12 weeks
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