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Predicting Missing Parts in Time Series Using Uncertainty Theory

机译:使用不确定性理论预测时间序列中的缺失零件

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摘要

As extremely large time series data sets grow more prevalent in a wide variety of applications, including biomedical data analysis, diagnosis and monitoring systems and exploratory data analysis in scientific and business time series, the need of developing efficient analysis methods is high. However, essential preprocessing algorithms are required in order to obtain positive results. The goal of this paper is to propose a novel algorithm that is appropriate for filling missing parts of time series. This algorithm, named FiTS (Filling Time Series), was evaluated over 11 congestive heart failure patients' ECGs (Electrocardiogram). Those patients using electronic microdevices with which were recording their ECGs and sending them via telephone to a home care monitoring system, over a period of 8 to 16 months. Randomly missing parts in each ECG were introduced in the initial ECG. As a result, FiTS had 100% of successfully completion with high reconstructed signal accuracy.
机译:随着极大的时间序列数据集在包括生物医学数据分析,诊断和监视系统以及科学和商业时间序列中的探索性数据分析在内的各种应用中变得越来越普遍,对开发有效分析方法的需求也很高。但是,需要基本的预处理算法才能获得肯定的结果。本文的目的是提出一种适合填充时间序列缺失部分的新颖算法。该算法名为FiTS(填充时间序列),在11位充血性心力衰竭患者的ECG(心电图)中得到了评估。这些使用电子微型设备的患者会在8到16个月内记录其心电图,并通过电话将其发送到家庭护理监控系统。每个心电图中随机丢失的部分都被引入到初始心电图中。结果,FiTS具有100%的成功完成率,并具有较高的重构信号精度。

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