基于灰色神经网络和大数据的评价指标预测研究与优化

Yuanhang Xiao, Xingyue Zhao, Yi Wu
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引用次数: 0

摘要

本文针对股票市场估值水平及其与基本面指数和流动性指数的定量关系的研究问题,通过序列水平比的方法使原始数据全部落入可容忍覆盖域。灰色预测模型采用序列求和的方法消除了时间序列的随机误差项。采用累积时间序列作为神经网络的输入层神经元,建立灰色神经网络预测模型定量描述和预测估值水平,采用加权平均价/销比获得科技创新的整体估值水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research and Optimazation on Evaluation Index Prediction Using Grey Neural Network and Big Data
Aiming at the research problem of the valuation level of the stock market and its quantitative relationship with the fundamental index and liquidity index, this paper makes all the original data fall into the tolerable coverage domain through the method of series level ratio. The random error term of time series is eliminated by summation of sequence in grey prediction model. The cumulative time series is used as the input layer neuron of the neural network, and the grey neural network prediction model is established to quantitatively describe and predict the valuation level, and the weighted average price/sales ratio is used to obtain the overall valuation level of the science and technology innovation.
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