早期异常检测的集成方法

Teodora Sandra Buda, H. Assem, Lei Xu
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引用次数: 11

摘要

主动异常检测是指及时发现数据集中存在的异常或异常模式。在异常(如故障或降级)发生之前发现它们可以带来巨大的好处,例如通过提前应用一些纠正措施来避免异常发生的能力(例如,为数据中心中接近饱和的系统分配更多资源)。在本文中,我们通过机器学习,特别是集成学习来解决主动异常检测问题。我们提出了一种早期异常检测集成方法ADE,它结合了最先进的异常检测技术的结果,以便提供比每种技术更准确的结果。此外,我们利用加权异常窗口作为训练模型的基础真理,优先考虑早期检测,以便及时发现异常。探索了各种策略来产生地面真值窗口。结果表明,与所考虑的所有数据集的每种单独技术相比,ADE在早期检测得分方面至少提高了10%。该技术可以在异常实际发生前16小时提前检测到异常。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ADE: An ensemble approach for early Anomaly Detection
Proactive anomaly detection refers to anticipating anomalies or abnormal patterns within a dataset in a timely manner. Discovering anomalies such as failures or degradations before their occurrence can lead to great benefits such as the ability to avoid the anomaly happening by applying some corrective measures in advance (e.g., allocating more resources for a nearly saturated system in a data centre). In this paper we address the proactive anomaly detection problem through machine learning and in particular ensemble learning. We propose an early Anomaly Detection Ensemble approach, ADE, which combines results of state-of-the-art anomaly detection techniques in order to provide more accurate results than each single technique. Moreover, we utilise a a weighted anomaly window as ground truth for training the model, which prioritises early detection in order to discover anomalies in a timely manner. Various strategies are explored for generating ground truth windows. Results show that ADE shows improvements of at least 10% in earliest detection score compared to each individual technique across all datasets considered. The technique proposed detected anomalies in advance up to ∼16h before they actually occurred.
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