基于GARCH和数据挖掘技术的上证综合指数短期预测

Wei Shen, Yan-ben Han
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引用次数: 1

摘要

由于股票指数的运动是非线性的,受多种因素的影响,股票指数预测对投资者和金融研究者来说是一个重要的问题。本文尝试用广义自回归条件异方差模型对上证综合指数的走势进行预测。为提高预测精度,引入数据挖掘技术,采用单指标、多指标和优化指标进行预测。通过对预测结果的比较,我们得出以下结论:优化指标组的预测结果准确率更高,其中MACD、PSY12与前2天收盘指标的组合预测效果最好
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short term forecasting of Shanghai Composite Index based on GARCH and data mining technique
Stock index forecasting is an important issue for investors and financial researchers as the movements of stock indices are nonlinear and subject to multiple factors. In this paper, we try to forecast the movements of Shanghai Composite Index using Generalized Autoregressive Condition Heteroskedasticity model. In order to increase accuracy, we introduced data mining technique and carried out forecast with single, multiple and optimized indicators. Through comparison of forecasting results, we reached the following conclusion: Forecasting results with optimized indicator groups have higher accuracy, of which the combination of MACD, PSY12 and closing indices of 2 days before has the best result
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