Generating Buy/Sell Signals for an Equity Share Using Machine Learning

Bugra Erkartal, L. Özdamar
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引用次数: 0

Abstract

This study proposes a novel model for predicting 5 days’ ahead share price direction of GARAN (Garanti Bankasi A.Ş.), an equity share that is the top traded stock in BIST100, Istanbul Stock Exchange -Turkey. The first model includes global macroeconomic indicators as well as local inputs whereas the second model is focused more on local inputs. The performances of the two models are tested using Support Vector Machines (SVM), Neural Network with Back-Propagation (BPN), and Decision Tree (DT) algorithms. Though BPN and SVM have previously been used to predict BIST100 Index movement, DT has not been utilized before with this purpose. Forecasting is carried out tested for a time span of about 6 months on a rolling horizon basis, that is, algorithms are re-run weekly with updated data to generate daily buy/sell signals for the next week. A simple trading strategy is implemented based on buy/sell signals to calculate the rate of return on investment during the testing period. The results illustrate that DT having 80% prediction accuracy outperforms BPN and SVM that achieve 60% accuracy. Consequently, DT achieves a higher rate of return.
使用机器学习为股票生成买入/卖出信号
本研究提出了一种新的模型来预测GARAN (Garanti Bankasi A.Ş.)未来5天的股价方向,GARAN是土耳其伊斯坦布尔证券交易所bst100的顶级交易股票。第一个模型包括全球宏观经济指标以及当地投入,而第二个模型更侧重于当地投入。使用支持向量机(SVM)、神经网络反向传播(BPN)和决策树(DT)算法对两种模型的性能进行了测试。虽然BPN和SVM已经被用于预测BIST100指数的运动,但DT还没有被用于此目的。预测是在滚动水平的基础上进行的,测试时间跨度约为6个月,也就是说,算法每周重新运行,更新数据,生成下周的每日买入/卖出信号。一个简单的交易策略是基于买入/卖出信号来计算测试期间的投资回报率。结果表明,DT的预测准确率为80%,优于BPN和SVM的预测准确率为60%。因此,DT实现了更高的收益率。
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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