时间序列数据异常校正改进预测

Dominik Ostroski, Karlo Slovenec, Ivona Brajdic, M. Mikuc
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引用次数: 0

摘要

本文提出了一种时间序列数据异常的检测和校正方法。该方法在几个月的磁盘使用时间序列数据上进行了测试。该方法首先要计算时间序列的差值,求出变换后数据的均值,并以此作为阈值,从而实现对异常的检测和校正。转换数据中任何值高于阈值的点对应于原始数据中的异常。发现异常后,对数据进行转换,使异常之前的所有数据都按异常值移动。通过这种方法去除异常,可以保持时间序列的趋势和季节性不变。结果表明,对转换后的磁盘使用时间序列进行时间序列预测比使用原始数据时产生更好的结果。
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Anomaly Correction in Time Series Data for Improved Forecasting
This paper presents a method for detecting and correcting anomalies in time series data. This method was tested on time series data of disk usage over a period of few months. For the method to be able to detect and correct anomalies, it has to calculate the difference of time series, find the mean value of transformed data and use it to set a threshold. Any point in transformed data that has a value higher than the threshold corresponds to an anomaly in original data. After an anomaly is found, data is transformed in such a way that all data before the anomaly is shifted by the value of the anomaly. By removing anomalies this way, trend and seasonality of time series are kept intact. Results show that time series forecasting performed on transformed disk usage time series produces better results than when the original data is used.
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