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The Comparison Study among Several Data Transformations in Autoregressive Modeling

机译:自回归建模几种数据转换中的比较研究

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In finance, the adjusted close of stocks are used to observe the performance of a company. The extreme prices, which may increase or decrease drastically, are often become particular concerned since it can impact to bankruptcy. As preventing action, the investors have to observe the future (forecasting) stock prices comprehensively. For that purpose, time series analysis could be one of statistical methods that can be implemented, for both stationary and non-stationary processes. Since the variability process of stocks prices tend to large and also most of time the extreme values are always exist, then it is necessary to do data transformation so that the time series models, i.e. autoregressive model, could be applied appropriately. One of popular data transformation in finance is return model, in addition to ratio of logarithm and some otthers Tukey ladder transformation. In this paper these transformations are applied to AR stationary models and non-stationary ARCH and GARCH models through some simulations with varying parameters. As results, this work present the suggestion table that shows transformations behavior for some condition of parameters and models. It is confirmed that the better transformation is obtained, depends on type of data distributions. In other hands, the parameter conditions term give significant influence either.
机译:在金融中,调整后的股票用于遵守公司的表现。极端价格,可能会增加或急剧下降,往往会受到特别关注,因为它可能会影响破产。作为预防行动,投资者必须综合地观察未来(预测)股票价格。为此目的,时间序列分析可以是可以实现的统计方法之一,用于静止和非静止过程。由于股票价格的变异过程往往大而且大部分时间总是存在,因此必须进行数据转换,以便适当地应用时间序列模型,即自回归模型。金融中流行的数据转换之一是返回模型,除了对数和一些OTTHERS Tukey梯形图的比率之外。在本文中,这些转换通过具有不同参数的一些模拟来应用于AR固定模型和非静止拱和加入模型。结果,这项工作显示了显示用于某些参数和模型条件的转换行为的建议表。确认获得更好的转换,取决于数据分布的类型。另一方面,参数条件术语也会产生重大影响。

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