时间序列中的缺失数据:归算方法综述与案例研究

S. Ribeiro, C. Castro
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引用次数: 0

摘要

处理时间序列数据中的缺失是数据分析中一个非常重要但经常被忽视的步骤。在本文中,描述了时间序列数据的性质和缺失机制,以帮助确定应该使用哪种归算方法来归算缺失数据,同时回顾了归算方法及其工作原理。采用文献中推荐的方法,对不同性质的合成数据进行归因,并对结果进行讨论。此外,本文还提出了一个关于使用混合缺失机制和混合性质的数据集预测(分类)美国市场不稳定性(BEAR或BULL)的案例研究,以评估不同类型的归算方法如何影响分类任务的最终结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Missing Data in Time Series: A Review of Imputation Methods and Case Study
Dealing with missingness in time series data is a very important, but oftentimes overlooked, step in data analysis. In this paper, the nature of time series data and missingness mechanisms are described to help identify which imputation method should be used to impute missing data, along with a review of imputation methods and how they work. Recommended methods from literature are used to impute synthetic data of different nature and the results are discussed. In addition, a case study concerning the prediction (classification) of US market instability (BEAR or BULL) using a data set with mixed missingness mechanisms and mixed nature is presented to evaluate how different types of imputation methods can affect the final results of the classification task.
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