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首页> 外文期刊>Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis >Searching for long memory effects in time series of central Europe stock market indices
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Searching for long memory effects in time series of central Europe stock market indices

机译:在中欧股市指数的时间序列中寻找长期记忆效应

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This article deals with one of the important parts of applying chaos theory to financial and capital markets – namely searching for long memory effects in time series of financial instruments. Source data are daily closing prices of Central Europe stock market indices – Bratislava stock index (SAX), Budapest stock index (BUX), Prague stock index (PX) and Vienna stock index (ATX) – in the period from January 1998 to September 2007. For analysed data R/S analysis is used to calculate the Hurst exponent. On the basis of the Hurst exponent is characterized formation and behaviour of analysed financial time series. Computed Hurst exponent is also statistical compared with his expected value signalling independent process. It is also operated with 5-day returns (i.e. weekly returns) for the purposes of comparison and identification nonperiodic cycles.
机译:本文讨论将混沌理论应用于金融和资本市场的重要部分之一,即在金融工具的时间序列中寻找长期记忆效应。原始数据是1998年1月至2007年9月期间中欧股市指数(布拉迪斯拉发股票指数(SAX),布达佩斯股票指数(BUX),布拉格股票指数(PX)和维也纳股票指数(ATX))的每日收盘价对于分析的数据,使用R / S分析来计算赫斯特指数。在赫斯特指数的基础上,分析了金融时间序列的形成和行为。与他的期望值表示独立过程相比,计算的赫斯特指数也具有统计意义。为了比较和识别非周期性周期,它还以5天的收益率(即每周收益率)运行。

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