Complex event processing for the non-expert with autoCEP: demo

Raef Mousheimish, Y. Taher, K. Zeitouni
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引用次数: 10

Abstract

The inference mechanisms of CEP engines are completely guided by rules, which are specified manually by domain experts. We argue that this user-based rule specification is a limiting factor, as it requires the experts to have technical knowledge about the CEP language they want to use, it restricts the usage of CEP to merely the detection of straightforward situations, and it restrains its propagation to more advanced fields that require earliness, prediction and proactivity. Therefore, we introduce autoCEP as a data mining-based approach that automatically learns CEP rules from historical traces. autoCEP requires no technical knowledge from domain experts, and it also shows that the generated rules fit for prediction and proactive applications. Satisfactory results from evaluations on real data demonstrate the effectiveness of our framework.
复杂事件处理的非专家与autoCEP:演示
CEP引擎的推理机制完全由规则指导,规则由领域专家手动指定。我们认为这种基于用户的规则规范是一个限制因素,因为它要求专家拥有他们想要使用的CEP语言的技术知识,它将CEP的使用限制为仅仅检测直接的情况,并且它限制了CEP向需要早期、预测和主动性的更高级领域的传播。因此,我们将autoCEP作为一种基于数据挖掘的方法引入,该方法可以从历史痕迹中自动学习CEP规则。autoCEP不需要领域专家的技术知识,它还表明生成的规则适合预测和主动应用程序。对实际数据的评价结果令人满意,证明了该框架的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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