A Comprehensive Review of Machine Learning for Financial Market Prediction Methods

R. M. Dhokane, O. P. Sharma
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引用次数: 1

Abstract

Financial market prediction is an important task for placing an investor's hard-earned money in the financial market to earn profit. Many parameters affect the financial market's valuation, making it volatile, which is challenging for investors. This review study gives a full overview of 53 research articles that were chosen based on the trend of machine learning algorithms, calculation methods, and other performance parameters. Primarily, it is seen that artificial neural network (ANN) and support vector machine (SVM) techniques are used for forecasting the financial market. For prediction purposes, stock selection is also an important task. A genetic algorithm (GA) is used to choose stocks, and it is a very important part of managing a portfolio. The K-means algorithm is used to create a group of stocks that have a similar pattern and behavior. Hybrid approaches also provide better results. This review paper makes it easier for researchers to understand the terms and key ideas of predicting the financial market using machine learning so they can make the right choices for their needs.
金融市场预测方法的机器学习综述
金融市场预测是将投资者的血汗钱投放到金融市场中赚取利润的一项重要工作。许多参数影响金融市场的估值,使其波动,这对投资者来说是一个挑战。本综述对基于机器学习算法、计算方法和其他性能参数的趋势选择的53篇研究文章进行了全面概述。首先,我们看到人工神经网络(ANN)和支持向量机(SVM)技术被用于预测金融市场。为了达到预测的目的,选股也是一项重要的任务。遗传算法用于股票选择,是投资组合管理的重要组成部分。k均值算法用于创建一组具有相似模式和行为的股票。混合方法也提供了更好的结果。这篇综述论文使研究人员更容易理解使用机器学习预测金融市场的术语和关键思想,以便他们能够根据自己的需求做出正确的选择。
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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