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Volatility Model Based On Multi-stock Index For Taiex Forecasting

机译:基于多股票指数的波动率模型用于Taiex预测

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Conventional time series models have been applied to handle many forecasting problems, such as financial, economic and weather forecasting. In stock markets, correct stock predictions will bring a huge profit for stock investors. However, conventional time series models produce forecasts based on some strict statistical assumptions about data distributions, and, therefore, they are not very proper to forecast financial datasets. This paper proposes a new forecasting model using adaptive learning techniques to predict TAIEX (Taiwan Stock Exchange Capitalization Weighted Stock index) with multi-stock indexes (NASDAQ stock index and Dow Jones stock index). In verification, this paper employs seven year period of TAIEX stock index, from 1997 to 2003, as experimental datasets, and the root mean square error (RMSE) as evaluation criterion. The performance comparison results show that the proposed model outperforms the listing methods in forecasting Taiwan stock market. Besides, from statistical test results, it is showed that the volatility of Dow Jones and the NASDAQ affect TAIEX significantly.
机译:常规时间序列模型已被用于处理许多预测问题,例如金融,经济和天气预报。在股票市场中,正确的股票预测将为股票投资者带来丰厚的利润。但是,常规的时间序列模型会根据有关数据分布的一些严格统计假设来生成预测,因此,它们不适用于预测金融数据集。本文提出了一种新的预测模型,该模型采用自适应学习技术来预测具有多种股票指数(纳斯达克股票指数和道琼斯股票指数)的TAIEX(台湾证券交易所资本加权股票指数)。为了验证这一点,本文以1997年至2003年为期7年的TAIEX股票指数作为实验数据集,并以均方根误差(RMSE)作为评估标准。性能比较结果表明,该模型在预测台湾股票市场方面优于上市方法。此外,从统计测试结果来看,道琼斯指数和纳斯达克指数的波动性对TAIEX有显着影响。

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