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A Comprehensive Survey on Portfolio Optimization, Stock Price and Trend Prediction Using Particle Swarm Optimization

机译:使用粒子群优化对投资组合优化,股价和趋势预测的全面调查

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摘要

Stock market trading has been a subject of interest to investors, academicians, and researchers. Analysis of the inherent non-linear characteristics of stock market data is a challenging task. A large number of learning algorithms are developed to study market behaviours and enhance the prediction accuracy; they have been optimized using swarm and evolutionary computation such as particle swarm optimization (PSO); its global optimization ability with continuous data has been exploited in financial domains. Limitations in the existing approaches and potential future research directions for enhancing PSO-based stock market prediction are discussed. This article aims at balancing the economics and computational intelligence aspects; it also analyzes the superiority of PSO for stock portfolio optimization, stock price and trend prediction, and other related stock market aspects along with implications of PSO.
机译:股票市场贸易一直是投资者,院士和研究人员感兴趣的主题。 股票市场数据固有的非线性特征分析是一个具有挑战性的任务。 开发了大量学习算法以研究市场行为并提高预测精度; 他们已经通过粒子群优化(PSO)等群和进化计算进行了优化; 其全球优化能力在金融领域中已被利用。 讨论了现有方法和潜在的未来研究方向,用于增强基于PSO的股票市场预测。 本文旨在平衡经济学和计算智能方面; 它还分析了PSO的优越性,用于股票组合优化,股价和趋势预测,以及PSO的影响以及其他相关股票市场方面。

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