利用条件密度估计将预测分析集成到复杂事件处理中

Maximilian Christ, Julian Krumeich, A. Kempa-Liehr
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引用次数: 22

摘要

对实时对象(如钢坯)在铸造过程中的监控会产生无数的事件。复杂事件处理(CEP)是一种尽可能快地分析结果事件流的技术。但经典的CEP无法考虑尚未发生的事件。目前尚不清楚如何将CEP从一种对过去事件作出反应的技术转变为一种预测近期事件的技术。条件密度估计允许将一个数学对象中给定事件下一次发生的估计和预期不确定性结合起来。此外,它允许计算事件模式的概率,这是CEP的基础。因此,我们将条件事件发生密度估计(CEODE)的概念引入到CEP中。我们提出了一个使用ceode将CEP引擎与预测分析相结合的参考体系结构。在将经典事件处理规则转换为主动事件处理规则的具体指导方针的基础上,我们将演示CEP如何从被动响应演变为预测性和规定性。
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Integrating Predictive Analytics into Complex Event Processing by Using Conditional Density Estimations
The monitoring of real-time objects such as steel billets during their casting process creates myriads of events. Complex Event Processing (CEP) is the technology to analyze resulting event streams as fast as possible. But classic CEP is not able to consider events that did not happen yet. It is not clear how to transform CEP from a technology, which reacts on past events, to one, which anticipates near future events. Conditional density estimation allows to combine both estimation and expected uncertainty about the next occurrence of a given event in one mathematical object. Moreover, it allows to calculate the probability of event patterns, which are the basis for CEP. Hence, we are introducing the concept of Conditional Event Occurrence Density Estimation (CEODE) to CEP. We present a reference architecture for combining CEP engines with predictive analytics using CEODEs. On basis of concrete guidelines for transforming classical event processing rules to proactive ones, we are demonstrating how CEP evolves from being reactive to becoming both predictive and prescriptive.
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