首页> 外文会议>International Workshop on Internet and Network Economics(WINE 2005); 20051215-17; Hong Kong(CN) >An Empirical Study of Volatility Predictions: Stock Market Analysis Using Neural Networks
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An Empirical Study of Volatility Predictions: Stock Market Analysis Using Neural Networks

机译:波动率预测的实证研究:使用神经网络的股票市场分析

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Volatility is one of the major factor that causes uncertainty in short term stock market movement. Empirical studies based on stock market data analysis were conducted to forecast the volatility for the implementation and evaluation of statistical models with neural network analysis. The model for prediction of Stock Exchange short term analysis uses neural networks for digital signal processing of filter bank computation. Our study shows that in the set of four stocks monitored, the model based on moving average analysis provides reasonably accurate volatility forecasts for a range of fifteen to twenty trading days.
机译:波动性是导致短期股市走势不确定的主要因素之一。进行了基于股票市场数据分析的实证研究,以预测运用神经网络分析进行统计模型的实施和评估的波动性。证券交易所短期分析预测模型使用神经网络进行滤波器组计算的数字信号处理。我们的研究表明,在所监视的四只股票集中,基于移动平均分析的模型提供了十五至二十个交易日范围内的合理准确的波动率预测。

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