使用近似中位数和中位数绝对偏差进行离群值和趋势检测

Gagandeep Singh, Suman Kundu
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引用次数: 0

摘要

在这个大规模技术的现代时代,每天都有大量的数据由用户和机器产生。这些数据来自可能包含异常值的数据流。检测这些异常值在很多方面都是有帮助的,比如由于过载导致的机器故障。同样,社交媒体帖子的趋势也是异常值,在不同层次上检测它们有很大的好处。本文提出了一种近似中值和中值绝对偏差的算法。该算法采用固定数量的内存空间,并与内存大小成线性关系。然后使用中位数和中位数绝对偏差来检测异常值和多级趋势,而不容易在数据中产生噪声。基于CPU使用基准数据和Twitter帖子数据的实验结果表明了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Outlier and Trend Detection Using Approximate Median and Median Absolute Deviation
In this modern era of technologies of scale, vast amounts of data are generated both by users and machines every day. This data comes as streams that may contain outliers. Detecting those outliers can be helpful in many ways, such as machine failures due to overload. Similarly, trends in social media posts are also outliers, and detecting them at different levels has great benefits. The current paper proposes an algorithm to approximate median and median absolute deviation from a stream of numerical values. The algorithm takes a fixed number of memory spaces and linear to the size of the memory. The median and median absolute deviation are then used to detect outliers and multi-level trends without being prone to noise in the data. Experimental results with CPU usage benchmark data and Twitter post data show the effectiveness of the proposed algorithms.
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