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首页> 外文期刊>IEEE Transactions on Signal Processing >SLANTS: Sequential Adaptive Nonlinear Modeling of Time Series
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SLANTS: Sequential Adaptive Nonlinear Modeling of Time Series

机译:SLANTS:时间序列的顺序自适应非线性建模

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摘要

We propose a method for adaptive nonlinear sequential modeling of time series data. Data are modeled as a nonlinear function of past values corrupted by noise, and the underlying nonlinear function is assumed to be approximately expandable in a spline basis. We cast the modeling of data as finding a good fit representation in the linear span of multidimensional spline basis, and use a variant of -penalty regularization in order to reduce the dimensionality of representation. Using adaptive filtering techniques, we design our online algorithm to automatically tune the underlying parameters based on the minimization of the regularized sequential prediction error. We demonstrate the generality and flexibility of the proposed approach on both synthetic and real-world datasets. Moreover, we analytically investigate the performance of our algorithm by obtaining both bounds on prediction errors and consistency in variable selection.
机译:我们提出了一种用于时间序列数据的自适应非线性顺序建模的方法。数据被建模为被噪声破坏的过去值的非线性函数,并且假定基础非线性函数在样条曲线的基础上近似可扩展。我们将数据建模转换为在多维样条曲线的线性跨度中找到合适的表示形式,并使用-penalty正则化的变体以减少表示的维数。使用自适应滤波技术,我们设计了在线算法,以基于正则化顺序预测误差的最小化自动调整基础参数。我们在合成数据集和实际数据集上都证明了该方法的一般性和灵活性。此外,我们通过获得预测误差的边界和变量选择的一致性来分析性地研究算法的性能。

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