智能环境中重复概念漂移的异常检测

V. Agate, Salvatore Drago, P. Ferraro, G. Re
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引用次数: 0

摘要

如今,许多众感应用都依赖于应用于数据流的学习算法,以便在智能环境中对信息和感兴趣的事件进行准确分类。不幸的是,输入数据的统计属性可能会以意想不到的方式发生变化。因此,异常和正常数据的定义可能会随着时间的推移而变化,机器学习模型可能需要逐步重新训练。这个问题被称为概念漂移,它经常被异常检测系统所忽略,导致显著的性能下降。此外,过去数据的统计分布往往倾向于重复自己,因此旧的学习模型可以被重用,避免了对新数据进行昂贵的再训练阶段,这将浪费计算和能源资源。在本文中,我们提出了一种用于智能环境中流数据的混合异常检测系统,该系统考虑了概念漂移,并最大限度地减少了在检测到传入数据分布的变化时需要重新训练的机器学习模型的数量。该系统是多层的,依赖于两个不同概念的漂移检测模块和一个异常检测模型的集合。使用两个真实数据集和一个合成数据集进行了广泛的实验评估;结果表明,系统使用f1分数和准确率等常用指标取得了良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection for Reoccurring Concept Drift in Smart Environments
Many crowdsensing applications today rely on learning algorithms applied to data streams to accurately classify information and events of interest in smart environments. Unfor-tunately, the statistical properties of the input data may change in unexpected ways. As a result, the definition of anomalous and normal data can vary over time and machine learning models may need to be re-trained incrementally. This problem is known as concept drift, and it has often been ignored by anomaly detection systems, resulting in significant performance degradation. In addition, the statistical distribution of past data often tends to repeat itself, and thus old learning models could be reused, avoiding costly retraining phases on new data, which would waste computational and energy resources. In this paper, we propose a hybrid anomaly detection system for streaming data in smart environments that accounts for concept drift and minimize the number of machine learning models that need to be retrained when shifts in incoming data distribution are detected. The system is multi-tier and relies on two different concept drift detection modules and an ensemble of anomaly detection models. An extensive experimental evaluation has been carried out, using two real datasets and a synthetic one; results show the high performance achieved by the system using common metrics such as F1-score and accuracy.
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