股票价格预测的智能模型综述

K. Ansah, Ismail Wafaa Denwar, J. K. Appati
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摘要

预测股价是一项至关重要的任务,因为预测股价可能会带来利润。由于数据的非平稳和混沌,股票价格预测是一个挑战。因此,投资者和股东之间的预测成为一个挑战,投资的钱来赚取利润。本文是股票价格预测的回顾,重点是指标,模型和数据集。本文详细回顾了30篇研究论文,这些论文提出了基于股票价格预测的方法,如支持向量机随机森林、线性回归、递归神经网络和长短期运动。除了预测之外,本文还讨论了局限性和未来的工作。实现有效股票价格预测的常用技术是RF、LSTM和SVM技术。尽管进行了大量的研究,但目前的股价预测技术仍存在许多局限性。从这次调查中可以看出,股市预测是一项复杂的任务,要准确有效地预测未来,需要考虑其他因素。
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Intelligent Models for Stock Price Prediction: A Comprehensive Review
Prediction of the stock price is a crucial task as predicting it may lead to profits. Stock price prediction is a challenge owing to non-stationary and chaotic data. Thus, the projection becomes challenging among the investors and shareholders to invest the money to make profits. This paper is a review of stock price prediction, focusing on metrics, models, and datasets. It presents a detailed review of 30 research papers suggesting the methodologies, such as Support Vector Machine Random Forest, Linear Regression, Recursive Neural Network, and Long Short-Term Movement based on the stock price prediction. Aside from predictions, the limitations, and future works are discussed in the papers reviewed. The commonly used technique for achieving effective stock price prediction is the RF, LSTM, and SVM techniques. Despite the research efforts, the current stock price prediction technique has many limits. From this survey, it is observed that the stock market prediction is a complicated task, and other factors should be considered to accurately and efficiently predict the future.
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