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Invariant time-series factorization

机译:不变时间序列分解

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摘要

Time-series analysis is an important domain of machine learning and a plethora of methods have been developed for the task. This paper proposes a new representation of time series, which in contrast to existing approaches, decomposes a time-series dataset into latent patterns and membership weights of local segments to those patterns. The process is formalized as a constrained objective function and a tailored stochastic coordinate descent optimization is applied. The time-series are projected to a new feature representation consisting of the sums of the membership weights, which captures frequencies of local patterns. Features from various sliding window sizes are concatenated in order to encapsulate the interaction of patterns from different sizes. The derived representation offers a set of features that boosts classification accuracy. Finally, a large-scale experimental comparison against 11 baselines over 43 real life datasets, indicates that the proposed method achieves state-of-the-art prediction accuracy results.
机译:时间序列分析是机器学习的重要领域,为此任务开发了许多方法。本文提出了一种时间序列的新表示形式,与现有方法相反,该方法将时间序列数据集分解为潜在模式,并将局部数据段的隶属权重分解为这些模式。该过程被形式化为受约束的目标函数,并应用了定制的随机坐标下降优化。时间序列将投影到一个新的特征表示形式,该特征表示形式包括成员权重的总和,该权重将捕获局部模式的频率。来自各种滑动窗口大小的要素被串联起来,以封装来自不同大小的图案的相互作用。派生表示提供了一组可提高分类准确性的功能。最后,在43个现实数据集上与11个基线进行的大规模实验比较表明,该方法达到了最新的预测准确性结果。

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