多层感知机、长短期记忆与门控循环单元的MDKA股价预测之比较

Bastul Wajhi Akramunnas, Legisnal Hakim, Dita Marta Putri, Asde Rahmawati, Yoan Purbolingga
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摘要

股票是由于资本的部分或全部交付而由个人对公司拥有的权利。投资者投资股票并试图获得最大的收益,但许多投资者仍然不确定投资所涉及的风险。为了把风险降到最低,投资者需要用准确的方法预测股价。可以实现股票数据预测的几种方法包括多层感知器(MLP)、长短期记忆(LSTM)和门控循环单元(GRU)。本研究的研究目标是通过测试神经元(10,20,30)和epoch(50,75,100),比较每种算法在产生更准确的股票价格预测模型方面的性能。本研究以市值最大的矿业股默迪卡铜金Tbk (MDKA)的股价数据为研究对象。使用82%的训练数据和18%的测试数据对上述部分算法进行测试得到了最好的结果,即10个神经元100个epoch的MLP模型,MAPE训练数据结果为2.325,MAPE测试数据为2.014。从测试结果来看,MLP可以预测MDKA 2018-2022年期间的股票价格,表现良好,错误率相对较小,而使用LSTM和GRU方法的测试仍然会产生较大的误差。因此,可以得出结论,MLP可以预测股票价格,结果更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of MDKA Stock Price Prediction using Multi-Layer Perceptron, Long Short-Term Memory, and Gated Recurrent Unit
Shares are rights owned by a person against a company due to the delivery of capital, either in part or in whole. Investors invest in stocks and try to get maximum results, but many investors are still unsure about the risks involved in investing. To minimize risk, investors need to predict stock prices with an accurate method. Several methods that can be implemented to predict stock data include Multi-Layer Perceptron (MLP), Long Short-Term Memory (LSTM), and Gated Recurrent Unit (GRU). The research objective to be achieved in this study is to compare the performance of each algorithm in producing a more accurate stock price forecasting model by testing neurons (10, 20, 30) and epochs (50, 75, 100). The research was conducted on the stock price data of PT. Merdeka Copper Gold Tbk (MDKA) which is a mining sector share with the largest capitalization value. Tests on some of the algorithms above got the best results using 82% training data and 18% test data, namely the MLP model with 10 neurons and 100 epochs with a MAPE training data result of 2.325 and a MAPE test data of 2.014. Based on the test results, MLP can predict MDKA stock prices for the 2018-2022 period with good performance and a relatively small error rate, while tests using the LSTM and GRU methods still produce large errors. Thus, it can be concluded that MLP can predict stock prices with more accurate results.
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