Time series data is a collection of chronological observations which is generated by several domains such as medical and financial fields. Over the years, different tasks such as classification, forecasting, and clustering have been proposed to analyze this type of data. Time series data has been also used to study the effect of interventions over time. Moreover, in many fields of science, learning the causal structure of dynamic systems and time series data is considered an interesting task which plays an important role in scientific discoveries. Estimating the effect of an intervention and identifying the causal relations from the data can be performed via causal inference. Existing surveys on time series discuss traditional tasks such as classification and forecasting or explain the details of the approaches proposed to solve a specific task. In this paper, we focus on two causal inference tasks, i.e., treatment effect estimation and causal discovery for time series data, and provide a comprehensive review of the approaches in each task. Furthermore, we curate a list of commonly used evaluation metrics and datasets for each task and provide in-depth insight. These metrics and datasets can serve as benchmarks for research in the field.
翻译:时间序列数据是医学和金融领域等若干领域产生的按时间顺序排列的数据。多年来,提出了分析这类数据的不同任务,如分类、预测和分组等。时间序列数据也用于研究干预的长期影响。此外,在许多科学领域,学习动态系统和时间序列数据的因果结构被认为是一项有趣的任务,在科学发现中发挥重要作用。估计干预的效果,通过因果推理确定数据中的因果关系。关于时间序列的现有调查讨论传统任务,如分类和预测,或解释为解决具体任务而提议的方法的细节。在本文件中,我们侧重于两个因果推论任务,即对时间序列数据的治疗效果估计和因果发现,并对每项任务的方法进行全面审查。此外,我们为每项任务制定一份常用的评价指标和数据集清单,提供深入的深入了解。这些指标和数据集可以作为实地研究的基准。