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Development of 2D Curve-Fitting Genetic/Gene-Expression Programming Technique for Efficient Time-series Financial Forecasting

机译:二维曲线拟合遗传/基因表达编程技术的开发,用于高效的时间序列财务预测

摘要

Stock market prediction is of immense interest to trading companies and buyers due to high profit margins. Therefore, precise prediction of the measure of increase or decrease of stock prices also plays an important role in buying/selling activities. This research presents a specialised extension to the genetic algorithms (GA) known as the genetic programming (GP) and gene expression programming (GEP) to explore and investigate the outcome of the GEP criteria on the stock market price prediction. The research presented in this paper aims at the modelling and prediction of short-to-medium term stock value fluctuations in the market via genetically tuned stock market parameters. The technique uses hierarchically defined GP and GEP techniques to tune algebraic functions representing the fittest equation for stock market activities. The proposed methodology is evaluated against five well-known stock market companies with each having its own trading circumstances during the past 20+ years. The proposed GEP/GP methodologies were evaluated based on variable window/population sizes, selection methods, and Elitism, Rank and Roulette selection methods. The Elitism-based approach showed promising results with a low error-rate in the resultant pattern matching with an overall accuracy of 93.46% for short term 5-day and 92.105 for medium-term 56-day trading
机译:由于高利润率,股票市场预测对贸易公司和购买者都非常感兴趣。因此,准确预测股票价格上涨或下跌的措施在买卖活动中也起着重要作用。这项研究提出了对遗传算法(GA)的专门扩展,称为遗传编程(GP)和基因表达编程(GEP),以探索和研究GEP标准对股市价格预测的结果。本文提出的研究旨在通过基因调整的股票市场参数对市场中短期股票价值波动进行建模和预测。该技术使用分层定义的GP和GEP技术来调整代数函数,这些函数代表了股市活动的最适等式。针对五家知名的股票市场公司评估了所提出的方法,每家公司在过去20多年中都有自己的交易环境。基于可变的窗口/人口规模,选择方法以及精英,等级和轮盘赌选择方法对提议的GEP / GP方法进行了评估。基于Elitism的方法显示了令人鼓舞的结果,其结果模式匹配的错误率低,短期5天的整体准确性为93.46%,中期56天的整体准确性为92.105

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