A Novel Sine Cosine Optimization with Stacked Long Short-term Memory-enabled Stock Price Prediction

Q3 Computer Science
T. Swathi, N. Kasiviswanath, A. Ananda Rao
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引用次数: 0

Abstract

Background: In the global financial market, the stock price index is used to analyse the performance of securities and the stock market. It can be obtained by accumulating stock price movements of every firm in the exchange market. A proper stock price prediction (SPP) model becomes essential for investors in turning the security market into a profitable place. Objective: Earlier works in the SPP models involve different approaches, such as statistical models, fundamental examination, time-series prediction, and machine learning (ML). Result and Method: Deep learning is a kind of ML model that tries to define high level conceptual concepts by the use of a learning process at distinct levels and stages. This study, in this view, provides a new sine cosine optimization (SCO) model with a deep learning-enabled stock price prediction (SCODL-SPP). The SCODL-SPP model intends to predict the closing prices of the shares using a deep learning model. The proposed SCODL-SPP model involves primary data pre-processing using a min-max normalization approach. A stacked long short-term memory (SLSTM) model is used to forecast stock values. Because hyperparameters in DL models are crucial, selecting them optimally can help improve prediction performance. Conclusion: The SLSTM Model's hyperparameters are optimised using the SCO algorithm in this research. According to the experiments, the SCODL-SPP model outperforms other models in terms of prediction accuracy.
基于堆叠长短期记忆的新型正弦余弦优化股票价格预测
背景:在全球金融市场中,股票价格指数被用来分析证券和股票市场的表现。它可以通过积累交易所市场上每个公司的股票价格变动来获得。一个合适的股票价格预测(SPP)模型对于投资者将证券市场变成一个有利可图的地方至关重要。目的:SPP模型的早期工作涉及不同的方法,如统计模型、基础检验、时间序列预测和机器学习(ML)。结果和方法:深度学习是一种机器学习模型,它试图通过使用不同层次和阶段的学习过程来定义高级概念概念。在这种观点下,本研究提供了一种新的正弦余弦优化(SCO)模型,该模型具有深度学习支持的股价预测(SCODL-SPP)。SCODL-SPP模型打算使用深度学习模型来预测股票的收盘价。提出的SCODL-SPP模型包括使用最小-最大归一化方法对原始数据进行预处理。叠长短期记忆(SLSTM)模型用于股票价值预测。因为超参数在深度学习模型中是至关重要的,所以选择最优的超参数可以帮助提高预测性能。结论:本研究使用SCO算法对SLSTM模型的超参数进行了优化。实验结果表明,SCODL-SPP模型在预测精度上优于其他模型。
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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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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