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Probabilistic Complex Event Recognition: A Survey

机译:概率复杂事件识别:一项调查

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摘要

Complex event recognition (CER) applications exhibit various types of uncertainty, ranging from incomplete and erroneous data streams to imperfect complex event patterns. We review CER techniques that handle, to some extent, uncertainty. We examine techniques based on automata, probabilistic graphical models, and first-order logic, which are the most common ones, and approaches based on Petri nets and grammars, which are less frequently used. Several limitations are identified with respect to the employed languages, their probabilistic models, and their performance, as compared to the purely deterministic cases. Based on those limitations, we highlight promising directions for future work.
机译:复杂事件识别(CER)应用程序显示出各种类型的不确定性,从不完整和错误的数据流到不完善的复杂事件模式。我们回顾了在一定程度上处理不确定性的CER技术。我们研究了基于自动机,概率图形模型和一阶逻辑的技术(这是最常见的技术),以及基于Petri网和语法的方法(这些方法较少使用)。与纯确定性案例相比,在使用语言,它们的概率模型及其性能方面存在一些限制。基于这些限制,我们强调了未来工作的有希望的方向。

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