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Training data selection by detecting predictability in non-stationary time series by a surrogate-cumulant based approach

机译:通过基于代理累积累积方法检测非静止时间序列的可预测性来培训数据选择

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We introduce a nonparametric cumulant based statistical approach for detecting linear and nonlinear statistical dependences in nonstationary time series. The statistical dependence is detected by measuring the predictability which tests the null hypothesis of statistical independence, expressed in Fourier-space, by the surrogate method. Therefore, the predictability is defined as a higher-order cumulant based significance discriminating between the original data and a set of scrambled surrogate data which correspond to the null hypothesis of a noncausal relationship between past and present. Information about the predictability can be used for example to select regions where a temporal structure is visible in order to select data for training a neural network for prediction. The regions where only a noisy behavior is observed are therefore ignored, avoiding in this fashion the learning of irrelevant noise which normally spoils the generalization characteristics of the neural network. We present an example of nonstationarity given by the chaotic time series of Henon (1976) perturbed with linearly increasing additive Gaussian noise. Nonlinear structures are tested in financial time series, like the Dollar-DM Tick exchange rate.
机译:我们介绍了一种基于非参数累积性的基于累积统计方法,用于检测非间断时间序列中的线性和非线性统计依赖性。通过替代方法测量在傅里叶空间中测试的统计独立性的零假设的可预测性来检测统计依赖性。因此,可预测性被定义为判别原始数据和一组加扰代理数据之间的高阶累积的重要性,该数据对应于过去和存在之间的非共同关系的无限关系的零假设。关于可预测性的信息可以例如用于选择可见时间结构的区域,以便选择用于训练神经网络以进行预测的数据。因此,仅观察到嘈杂行为的区域被忽略,以这种方式避免了对神经网络的泛化特性的无关噪声的学习。我们展示了由Henon(1976)的混沌时间序列扰乱的非间抗性的一个例子,扰乱了线性增加的添加剂高斯噪声。非线性结构在金融时间序列中进行测试,如美元-DM滴定汇率。

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