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Empirical Analysis for Stock Price Prediction Using NARX Model with Exogenous Technical Indicators

机译:基于NARX模型和外生技术指标的股价预测实证分析

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摘要

Stock price prediction is one of the major challenges for investors who participate in the stock markets. Therefore, different methods have been explored by practitioners and academicians to predict stock price movement. Artificial intelligence models are one of the methods that attracted many researchers in the field of financial prediction in the stock market. This study investigates the prediction of the daily stock prices for Commerce International Merchant Bankers (CIMB) using technical indicators in a NARX neural network model. The methodology employs comprehensive parameter trails for different combinations of input variables and different neural network designs. The study seeks to investigate the optimal artificial neural networks (ANN) parameters and settings that enhance the performance of the NARX model. Therefore, extensive parameter trails were studied for various combinations of input variables and NARX neural network configurations. The proposed model is further enhanced by preprocessing and optimising the NARX model’s input and output parameers. The prediction performance is assessed based on the mean squared error (MSE), R-squared, and hit rate. The performance of the proposed model is compared with other models, and it is shown that the utilisation of technical indicators with the NARX neural network improves the accuracy of one-step-ahead prediction for CIMB stock in Malaysia. The performance of the proposed model is further improved by optimising the input data and neural network parameters. The improved prediction of stock prices could help investors increase their returns from investment in stock markets.
机译:股价预测是参与股市的投资者面临的主要挑战之一。因此,从业者和学者探索了不同的方法来预测股价走势。人工智能模型是股市金融预测领域吸引众多研究人员的方法之一。本研究使用 NARX 神经网络模型中的技术指标调查了 Commerce International Merchant Bankers (CIMB) 每日股价的预测。该方法对输入变量的不同组合和不同的神经网络设计采用了全面的参数跟踪。该研究旨在研究增强 NARX 模型性能的最佳人工神经网络 (ANN) 参数和设置。因此,研究了输入变量和 NARX 神经网络配置的各种组合的广泛参数跟踪。通过对 NARX 模型的输入和输出参数进行预处理和优化,进一步增强了所提出的模型。根据均方误差 (MSE)、R 平方和命中率评估预测性能。将所提模型的性能与其他模型进行了比较,结果表明,利用NARX神经网络的技术指标提高了马来西亚联昌国际股票提前一步预测的准确性。通过优化输入数据和神经网络参数,进一步提高了所提模型的性能。改进的股票价格预测可以帮助投资者增加股票市场投资的回报。

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