从时间序列中学习:监督聚合特征提取

A. Schirru, Gian Antonio Susto, S. Pampuri, S. McLoone
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引用次数: 19

摘要

许多建模问题需要估计一个或多个时间序列的标量输出。这类问题通常是通过从时间序列中提取固定数量的特征(比如它们的统计矩)来解决的,随之而来的是信息丢失,导致次优预测模型。此外,特征提取技术通常会做出不符合现实世界设置的假设(例如,恒定长度的均匀采样时间序列),并且无法提供一种彻底的方法来处理噪声数据。本文提出了一种基于功能学习的方法来克服上述问题;提出的监督聚合特征提取(SAFE)方法允许对时间序列数据进行连续、平滑的估计(产生聚合的局部信息),同时估计一个连续的形状函数,从而产生最佳预测。SAFE范式具有几个特性,如封闭形式解,将一阶和二阶导数信息合并到回归矩阵中,生成的函数预测器的可解释性,以及利用可再生核希尔伯特空间设置生成非线性预测模型的可能性。仿真研究提供了突出的优势,新方法w.r.t.标准无监督特征选择方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning from time series: Supervised Aggregative Feature Extraction
Many modeling problems require to estimate a scalar output from one or more time series. Such problems are usually tackled by extracting a fixed number of features from the time series (like their statistical moments), with a consequent loss in information that leads to suboptimal predictive models. Moreover, feature extraction techniques usually make assumptions that are not met by real world settings (e.g. uniformly sampled time series of constant length), and fail to deliver a thorough methodology to deal with noisy data. In this paper a methodology based on functional learning is proposed to overcome the aforementioned problems; the proposed Supervised Aggregative Feature Extraction (SAFE) approach allows to derive continuous, smooth estimates of time series data (yielding aggregate local information), while simultaneously estimating a continuous shape function yielding optimal predictions. The SAFE paradigm enjoys several properties like closed form solution, incorporation of first and second order derivative information into the regressor matrix, interpretability of the generated functional predictor and the possibility to exploit Reproducing Kernel Hilbert Spaces setting to yield nonlinear predictive models. Simulation studies are provided to highlight the strengths of the new methodology w.r.t. standard unsupervised feature selection approaches.
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