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DANGCEM2014-2021

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DataCite Commons2023-08-11 更新2025-04-16 收录
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https://ieee-dataport.org/documents/dangcem2014-2021
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资源简介:
The stock market is a volatile and nonlinear environment, making it difficult to predict returns accurately. However,machine learning and deep learning models have been able toachieve some degree of accuracy in predicting financial timeseries. The recurrent neural networks (RNN) are derived fromthe feedforward neural networks, a deep learning algorithm.The cases of gradient vanishing and explosion are commonlyassociated with the traditional RNNs. The Long-Short TermMemory (LSTM) model is capable of eliminating the problemswith RNNs and this has made the LSTM to have become famousin the modeling of data with some complex sequences. The goal oft his research is to improve the accuracy of stock market forecastsu sing machine learning and classification algorithms of neural network LSTM. The historical stock prices data (2nd January, 2014 – 22nd September, 2021) of the selected Nigerian company, Dangote Cement Plc. was subjected to data mining and information extraction for the purpose of understanding the hiddenp atterns and forecast the behavior trend in the future. Resultsr evealed that the proposed RNN-LSTM outperformed ANN and Fuzzy-GA models deployed for the same stock price movement’s datasets using MSE and RMSE as 0.1942 to 0.6889/0.7192, and 0.4990 to 0.8300/0.8481 respectively. The minimal MSE and RMSE obtained shows the efficacy of the LSTM model in thep  rediction of stock market returns.
提供机构:
IEEE DataPort
创建时间:
2023-08-11
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