Self-supervised learning achieves superior performance in many domains by extracting useful representations from the unlabeled data. However, most of traditional self-supervised methods mainly focus on exploring the inter-sample structure while less efforts have been concentrated on the underlying intra-temporal structure, which is important for time series data. In this paper, we present SelfTime: a general self-supervised time series representation learning framework, by exploring the inter-sample relation and intra-temporal relation of time series to learn the underlying structure feature on the unlabeled time series. Specifically, we first generate the inter-sample relation by sampling positive and negative samples of a given anchor sample, and intra-temporal relation by sampling time pieces from this anchor. Then, based on the sampled relation, a shared feature extraction backbone combined with two separate relation reasoning heads are employed to quantify the relationships of the sample pairs for inter-sample relation reasoning, and the relationships of the time piece pairs for intra-temporal relation reasoning, respectively. Finally, the useful representations of time series are extracted from the backbone under the supervision of relation reasoning heads. Experimental results on multiple real-world time series datasets for time series classification task demonstrate the effectiveness of the proposed method. Code and data are publicly available at https://haoyfan.github.io/.
翻译:自监督学习在许多领域取得优异的成绩,方法是从未标记的时间序列中提取有用的表示方式。然而,大多数传统的自监督方法主要侧重于探索标点间结构的正和负抽样,而较少的努力则集中于对时间序列数据十分重要的内在时际结构。在本文中,我们介绍“自我时代:一个普遍自我监督的时间序列学习框架”,探讨抽样关系和时间序列的时间序列间关系,以了解未标记的时间序列中的基本结构特征。具体地说,我们首先通过抽样抽样调查某个特定锚点抽样的正和负抽样,以及从这个锚取样点取样的时际关系,来产生这种抽样关系。然后,根据抽样关系,我们介绍一个共同的特征提取骨干,加上两个独立的关系推理,用来量化抽样对之间的关系,以及时间序列中的时间序列对时间序列对时间序列的关系,分别用来了解未标记时间序列关系系列中未标记的特征特征。最后,在对某一锚点的标点抽样抽样抽样抽样抽样中,从这个锚点取样的时间序列中提取,然后根据抽样关系框架,对目前现有的数据框架进行公开推理算。