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Forecasting stock market short-term trends using a neuro-fuzzy based methodology

机译:使用基于神经模糊的方法预测股市短期趋势

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A neuro-fuzzy system composed of an Adaptive Neuro Fuzzy Inference System (ANFIS) controller used to control the stock market process model, also identified using an adaptive neuro-fuzzy technique, is derived and evaluated for a variety of stocks. Obtained results challenge the weak form of the Efficient Market Hypothesis (EMH) by demonstrating much improved and better predictions, compared to other approaches, of short-term stock market trends, and in particular the next day's trend of chosen stocks. The ANFIS controller and the stock market process model inputs are chosen based on a comparative study of fifteen different combinations of past stock prices performed to determine the stock market process model inputs that return the best stock trend prediction for the next day in terms of the minimum Root Mean Square Error (RMSE). Gaussian-2 shaped membership functions are chosen over bell shaped Gaussian and triangular ones to fuzzify the system inputs due to the lowest RMSE. Real case studies using data from emerging and well developed stock markets - the Athens and the New York Stock Exchange (NYSE) -to train and evaluate the proposed system illustrate that compared to the "buy and hold" strategy and several other reported methods, the proposed approach and the forecasting trade accuracy are by far superior.
机译:派生并评估了各种股票的神经模糊系统,该神经模糊系统由用于控制股市过程模型的自适应神经模糊推理系统(ANFIS)控制器组成,并且也使用自适应神经模糊技术对其进行了识别。与其他方法相比,获得的结果通过证明与短期股票市场趋势(尤其是所选股票的第二天趋势)相比,有很多改进和更好的预测,从而挑战了有效市场假说(EMH)的弱形式。根据对过去股票价格的十五种不同组合的比较研究,选择ANFIS控制器和股票市场过程模型输入,以确定股票市场过程模型输入,这些输入将以最小的价格返回第二天的最佳股票趋势预测均方根误差(RMSE)。选择高斯2型隶属函数,而不是钟形高斯和三角函数,以使RMSE最低,从而使系统输入变得模糊。使用来自新兴市场和发达市场的股票(雅典和纽约证券交易所,NYSE)的数据进行实际案例研究,以训练和评估所提议的系统,这表明与“买入并持有”策略和其他几种报道的方法相比,所提出的方法和预测贸易的准确性要好得多。

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