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Learning Patterns of States in Time Series by Genetic Programming

机译:遗传规划在时间序列中的状态学习模式

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A state in time series can be referred as a certain signal pattern occurring consistently for a long period of time. Learning such a pattern can be useful in automatic identification of the time series state for tasks like activity recognition. In this study we showcase the capability of our GP-based time series analysis method on learning different types of states from multi-channel stream input. This evolutionary learning method can handle relatively complex scenarios using only raw inputs requiring no features. The method performed very well on both artificial time series and real world human activity data. It can be competitive comparing with classical learning methods on features.
机译:时间序列中的状态可以称为长时间连续出现的某个信号模式。学习这种模式对于诸如活动识别之类的任务的时间序列状态的自动识别很有用。在这项研究中,我们展示了基于GP的时间序列分析方法从多通道流输入中学习不同类型状态的能力。这种进化学习方法仅使用不需要特征的原始输入即可处理相对复杂的场景。该方法在人工时间序列和现实世界中的人类活动数据上均表现出色。与传统的特征学习方法相比,它具有竞争力。

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