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Fractal Inspection and Machine Learning-Based Predictive Modelling Framework for Financial Markets

机译:基于分形检查和机器学习的金融市场预测建模框架

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This paper presents a novel framework to conduct empirical investigation and carry out predictive modelling on daily index prices of Bombay stock exchange, Dow Jones Industrial Average, Hang Seng Index, NIFTY 50, NASDAQ and NIKKEI, representing developed and emerging economies. We examine the equity markets in detail to check whether they follow pure random walk models or not. Mandelbrot’s rescaled range analysis-based Hurst exponent and fractal dimensional index have been estimated to assess the dynamics of the daily prices of the chosen stock indices. Four advanced machine learning algorithms for predictive modelling—adaptive neuro-fuzzy inference system, dynamic evolving neuro-fuzzy inference system, Jordan neural network, support vector regression and random forest—have been used to build forecasting frameworks to predict the future index prices. Fractal inspection strongly rejects random walk hypothesis and suggests that the considered stock indices exhibit significant persistent trend. The results of the predictive modelling exercises show that prices can be effectively forecasted. The research framework and the overall findings can be useful for the investors and traders to a large extent.
机译:本文提出了一个新颖的框架,可以进行孟买证券交易所,道琼斯工业平均指数,恒生指数,NIFTY 50,纳斯达克和日经指数(代表发达和新兴经济体)的每日指数价格进行实证研究并进行预测模型。我们将详细研究股票市场,以检查它们是否遵循纯随机游走模型。据估计,Mandelbrot基于比例范围分析的重新定标的Hurst指数和分形维数指数可以评估所选股票指数的每日价格动态。四种用于预测建模的高级机器学习算法(自适应神经模糊推理系统,动态演化神经模糊推理系统,Jordan神经网络,支持向量回归和随机森林)已用于构建预测框架以预测未来的指数价格。分形检查强烈拒绝了随机游走假说,并表明所考虑的股票指数表现出显着的持续趋势。预测建模练习的结果表明可以有效地预测价格。研究框架和整体研究结果在很大程度上对投资者和交易者有用。

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