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Learning Nonlinear Manifolds from Time Series

机译:从时间序列中学习非线性流形

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There has been growing interest in developing nonlinear dimensionality reduction algorithms for vision applications. Although progress has been made in recent years, conventional nonlinear dimensionality reduction algorithms have been designed to deal with stationary, or independent and identically distributed data. In this paper, we present a novel method that learns nonlinear mapping from time series data to their intrinsic coordinates on the underlying manifold. Our work extends the recent advances in learning nonlinear manifolds within a global coordinate system to account for temporal correlation inherent in sequential data. We formulate the problem with a dynamic Bayesian network and propose an approximate algorithm to tackle the learning and inference problems. Numerous experiments demonstrate the proposed method is able to learn nonlinear manifolds from time series data, and as a result of exploiting the temporal correlation, achieve superior results.
机译:对开发用于视觉应用的非线性降维算法的兴趣日益浓厚。尽管近年来已经取得了进步,但是常规的非线性降维算法已被设计为处理固定的,独立的或相同分布的数据。在本文中,我们提出了一种新颖的方法,可以学习从时序数据到基础流形上它们的固有坐标的非线性映射。我们的工作扩展了在全局坐标系中学习非线性流形的最新进展,以说明顺序数据中固有的时间相关性。我们用动态贝叶斯网络来表述问题,并提出一种近似算法来解决学习和推理问题。大量实验表明,该方法能够从时间序列数据中学习非线性流形,并通过利用时间相关性,取得了较好的效果。

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