Dhaka stock market timing decisions by hybrid machine learning technique

S. Banik, A. K. Khan, M. Anwer
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引用次数: 8

Abstract

Stock market prediction has been a challenging task due to the nature of the data which is very noisy and time varying. However, this theory has been faced by many empirical studies and a number of researchers have successfully applied machine learning approaches to predict stock market. The problem studied here is about stock prediction for the use of investors. It is true investors usually get loss because of unclear investment objective and blind investment. This paper proposes to investigate the rough set model, the artificial neural network model and the hybrid artificial neural network model and the rough set model for determining the optimal buy and sell of a share on a Dhaka stock exchange. Confusion matrix is used to evaluate the performance of the observed and predicted classes for selected models. Our experimental result shows that the proposed hybrid model has higher accuracy than the single rough set model and the artificial neural network model. We believe this paper will be useful to stock investors to determine the optimal buy and sell time on Dhaka Stock Exchange.
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达卡股市时机决策采用混合机器学习技术
股票市场预测是一项具有挑战性的任务,因为数据具有很大的噪声和时变。然而,这一理论面临着许多实证研究的挑战,许多研究人员已经成功地将机器学习方法应用于股票市场预测。这里研究的问题是关于股票预测供投资者使用。投资目标不明确、盲目投资往往会给投资者带来损失,这是事实。本文拟研究粗糙集模型、人工神经网络模型、混合人工神经网络模型和粗糙集模型在达卡证券交易所股票最优买卖决策中的应用。混淆矩阵用于评估所选模型的观察和预测类的性能。实验结果表明,该混合模型比单一粗糙集模型和人工神经网络模型具有更高的精度。我们相信本文将有助于股票投资者确定达卡证券交易所的最佳买入和卖出时间。
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