Multiresolution methods for financial time series prediction

V. Bjorn
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引用次数: 22

Abstract

Summary form only given. Fractional Brownian motion (fBm), a 1/f, fractal process, has long been considered a plausible model for financial time series. A fractal structure of the market, indicating the presence of correlations across time, hints at the possibility of some predictability. Recent advances in time/frequency localized transforms by the applied mathematics and electrical engineering communities provide us with powerful new methods for the analysis of this type of process. In fact, it has been proven by Wornell that the wavelet transform is an optimal (KL) transform for fBm processes. With this result, we consider using the wavelet decomposition to analyze financial time series. Specifically, the discrete wavelet transform can be used to decompose a signal into several scales, while maintaining time localization of events in each scale. In terms of financial time series, we can conceptually think of each of these scales as the contribution to the price movement from the information and traders associated with a given investment horizon, for instance, long term traders, such as institutional investors, basing their trades on long term information, form the low-frequency component of the market. Once we have extracted out these scales, we can view each as a stationary time series, which can be modeled, analyzed and predicted individually, either independently, or in conjunction with other scales and data that is relevant to that scale. For the case of prediction, the forecasts from each scale can be fused together, with traditional techniques such as hard coded decision rules, or with a neural network, to arrive at tomorrow's direction and/or price.
金融时间序列预测的多分辨率方法
只提供摘要形式。分数布朗运动(fBm)是一种1/f分形过程,长期以来被认为是金融时间序列的合理模型。市场的分形结构表明存在着跨时间的相关性,暗示着某种可预测性的可能性。应用数学和电子工程界在时间/频率局部变换方面的最新进展为我们分析这类过程提供了强大的新方法。事实上,Wornell已经证明了小波变换是fBm过程的最优(KL)变换。在此基础上,我们考虑使用小波分解来分析金融时间序列。具体来说,离散小波变换可以将信号分解成几个尺度,同时保持每个尺度上事件的时间局部化。就金融时间序列而言,我们可以从概念上认为这些尺度中的每一个都是与给定投资范围相关的信息和交易者对价格变动的贡献,例如,长期交易者,如机构投资者,基于长期信息进行交易,形成市场的低频成分。一旦我们提取出这些尺度,我们就可以将每个尺度视为一个平稳的时间序列,可以单独建模、分析和预测,可以独立地进行,也可以与其他尺度和与该尺度相关的数据一起进行。就预测而言,每个尺度的预测可以通过硬编码决策规则等传统技术或神经网络融合在一起,以得出明天的方向和/或价格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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