Complexity pursuit for unifying time series

Yumin Yang
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Abstract

Complexity pursuit is a recently developed algorithm using the gradient descent for separating interesting components from time series. It is an extension of projection pursuit to time series data and the method is closely related to blind separation of time-dependent source signals and independent component analysis. The goal is to find projections of time series that have interesting structure, defined using criteria related to Kolmogoroff complexity or coding length. In this paper, we derived a simple approximation of coding length that takes into account the nongaussianity, the autocorrelations and the variance nonstationary of the time series. We give a simple algorithm for its approximative optimization.
统一时间序列的复杂性追求
复杂度追踪是最近发展起来的一种利用梯度下降从时间序列中分离出感兴趣分量的算法。投影寻踪是对时间序列数据的扩展,该方法与时间相关源信号的盲分离和独立分量分析密切相关。目标是找到具有有趣结构的时间序列的投影,这些结构使用与Kolmogoroff复杂度或编码长度相关的标准定义。在本文中,我们推导了一个简单的编码长度近似值,该近似值考虑了时间序列的非高斯性、自相关性和方差非平稳性。给出了一种简单的近似优化算法。
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