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The Application of Wavelet Analysis in Financial Multiple Change Points Time Series

机译:小波分析在金融多变化点时间序列中的应用

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In the dynamic financial market, the change of financial asset prices is always described as a certain random events which result in abrupt changes. The random time when the event occurs is called a change point. As the event happens, in order to mitigate property damage the government should increase the macro-control ability. As a result, we need to find a valid statistical model for change point problem to solve it effectively. Wavelet transformation method is introduced into financial market due to its convenience and simplicity. This paper proposes two methodologies which are Quandt-Andrews and wavelet transformation are to test the multiple change points stationary financial model in time series. We obtain the estimation of multiple change points, and compare the power of the two methods. From the real data analysis, the wavelet transformation method test is more efficient than Quandt-Andrews test.
机译:在动态金融市场中,金融资产价格的变化总是被描述为某种导致突变的随机事件。事件发生的随机时间称为更改点。随着事件的发生,为了减轻财产损失,政府应提高宏观调控能力。结果,我们需要为变更点问题找到有效的统计模型,以有效地解决它。小波变换方法由于其简便性而被引入金融市场。本文提出了两种方法,分别是Quandt-Andrews和小波变换来测试时间序列中的多个变化点固定财务模型。我们获得了多个变化点的估计,并比较了两种方法的功效。从实际数据分析来看,小波变换方法测试比Quandt-Andrews测试更有效。

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