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Normalized Cross-Match: Pattern Discovery Algorithm from Biofeedback Signals

机译:归一化交叉匹配:来自生物反馈信号的模式发现算法

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Biofeedback signals are important elements in critical care applications, such as monitoring ECG data of a patient, discovering patterns from large amount of ECG data sets, detecting outliers from ECG data, etc. Because the signal data update continuously and the sampling rates may be different, time-series data stream is harder to be dealt with compared to traditional historical time-series data. For the pattern discovery problem on time-series streams, Toyoda proposed the CrossMatch (CM) approach to discover the patterns between two time-series data streams (sequences), which requires only O(n) time per data update, where n is the length of one sequence. CM, however, does not support normalization, which is required for some kinds of sequences (e.g. EEG data, ECG data). Therefore, we propose a normalized-CrossMatch approach (NCM) that extends CM to enforce normalization while maintaining the same performance capabilities.
机译:生物反馈信号是重症监护应用中的重要元素,例如监视患者的ECG数据,从大量的ECG数据集中发现模式,从ECG数据中检测异常值等。因为信号数据不断更新并且采样率可能不同,与传统的历史时间序列数据相比,时间序列数据流更难处理。对于时序流上的模式发现问题,丰田章男提出了CrossMatch(CM)方法来发现两个时序数据流(序列)之间的模式,每次数据更新仅需要O(n)时间,其中n是一个序列的长度。但是,CM不支持归一化,这是某些序列(例如EEG数据,ECG数据)所必需的。因此,我们提出了标准化的CrossMatch方法(NCM),该方法扩展了CM以在保持相同性能能力的同时执行标准化。

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