A plethora of data streams are generated every day due to the rapid development of the Internet. In the era of big data, real-time data stream processing becomes more and more popular in data mining. However, traditional techniques can no longer satisfy our needs, because of noise, sensor errors and other natural factors within data streams. In this paper, on the basis of complex event processing (CEP) technology, we propose a method combining NFA with match buffer (mNFA) using probability theory to address the issue. Our method can not only process massive uncertain event streams efficiently, but also support probabilistic event streams query processing. Furthermore, we also apply dynamic probability calculation algorithm and filtering eve...
Abstract. This paper describes a complex event recognition approach with probabilistic reasoning for...
As sensors are adopted in almost every field of life, the Internet of Things (IoT) is triggering a m...
Efficient matching of incoming mass events to persistent queries is fundamental to complex event pro...
Abstract—In the 21st century, as technologies of perceptual recognition develops, devices of informa...
In complex event processing (CEP), simple derived event (SDE) tuples are combined in pattern matchin...
A major problem in detecting events in streams of data is that the data can be imprecise (e.g. RFID ...
International audienceFor the last two decades, complex event processing under uncertainty has been ...
Summarization: In complex event processing (CEP), simple derived event tuples are combined in patter...
Many Big Data technologies were built to enable the processing of human generated data, setting asid...
Detection of patterns in high speed, large volume of event streams has been an important paradigm in...
Complex Event Processing (CEP) is a popular method to monitor processes in several contexts, especia...
In Complex Event Recognition (CER), applications express business rules in the form of patterns and ...
Data mining in real-time data streams is associated with multiple types of uncertainty, which often ...
Several application domains involve detecting complex situations and reacting to them. This asks for...
Complex Event Processing (CEP) enables real-time inferring of events and patterns of interest. Aggr...
Abstract. This paper describes a complex event recognition approach with probabilistic reasoning for...
As sensors are adopted in almost every field of life, the Internet of Things (IoT) is triggering a m...
Efficient matching of incoming mass events to persistent queries is fundamental to complex event pro...
Abstract—In the 21st century, as technologies of perceptual recognition develops, devices of informa...
In complex event processing (CEP), simple derived event (SDE) tuples are combined in pattern matchin...
A major problem in detecting events in streams of data is that the data can be imprecise (e.g. RFID ...
International audienceFor the last two decades, complex event processing under uncertainty has been ...
Summarization: In complex event processing (CEP), simple derived event tuples are combined in patter...
Many Big Data technologies were built to enable the processing of human generated data, setting asid...
Detection of patterns in high speed, large volume of event streams has been an important paradigm in...
Complex Event Processing (CEP) is a popular method to monitor processes in several contexts, especia...
In Complex Event Recognition (CER), applications express business rules in the form of patterns and ...
Data mining in real-time data streams is associated with multiple types of uncertainty, which often ...
Several application domains involve detecting complex situations and reacting to them. This asks for...
Complex Event Processing (CEP) enables real-time inferring of events and patterns of interest. Aggr...
Abstract. This paper describes a complex event recognition approach with probabilistic reasoning for...
As sensors are adopted in almost every field of life, the Internet of Things (IoT) is triggering a m...
Efficient matching of incoming mass events to persistent queries is fundamental to complex event pro...