Stock Price Prediction based on Optimized Attribute and Cascaded Machine Learning Algorithm

R. Yadav, M. Sivakkumar
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Abstract

The wealth of currency and nation depends on the growth of the stock market. The prediction of stock price varies according to their parameters such as open price, close price and strike price. The variation of parameters creates an unstable and volatile situation for the stock market. The unstable nature of stock market diverts customers for the investments. In this paper proposed cascaded machine learning algorithm for the stock price prediction. The cascaded machine learning algorithm work with an optimized variance of stock parameters. The process of parameters optimization achieves by particle swarm optimization. The particle swarm optimization is a memory-based and iterative process. The proposed algorithm implemented in MATLAB software and tested with NSE data of different banks such as HDFC, IDBI and AXIS bank.
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基于优化属性和级联机器学习算法的股票价格预测
货币和国家的财富取决于股票市场的增长。股票价格的预测根据其参数如开盘价、收盘价和行权价而变化。参数的变化给股票市场造成了不稳定和波动的局面。股票市场的不稳定性转移了客户的投资兴趣。本文提出了一种用于股票价格预测的级联机器学习算法。级联机器学习算法与优化的股票参数方差一起工作。参数优化过程采用粒子群算法实现。粒子群优化是一个基于记忆的迭代过程。该算法在MATLAB软件中实现,并使用HDFC、IDBI、AXIS银行等不同银行的NSE数据进行了测试。
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