基于单类分类的边缘上下文数据流自适应新颖性检测

Olga Jodelka, C. Anagnostopoulos, Kostas Kolomvatsos
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引用次数: 2

摘要

在线新颖性检测是边缘计算中的一项新兴任务,它试图识别上下文数据流中的新概念,这些概念应该被纳入预测分析和在边缘计算节点上本地执行的推理模型中。提出了一种基于单类支持向量机的无监督自适应网络边缘多变量数据流在线新颖性检测机制;一类分类范式的一个实例。由于提出的可调周期模型再训练,我们的机制能够及时有效地识别新事物,并且资源高效地适应数据流。我们的实验评估和比较评估展示了所提出的机制在识别新颖性方面的有效性和效率,这些新颖性取决于必要的模型再训练时代。
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Adaptive Novelty Detection over Contextual Data Streams at the Edge using One-class Classification
Online novelty detection is an emerging task in Edge Computing trying to identify novel concepts in contextual data streams which should be incorporated into predictive analytics and inferential models locally executed on edge computing nodes. We introduce an unsupervised adaptive mechanism for online novelty detection over multi-variate data streams at the network edge based on the One-class Support Vector Machine; an instance of One-class Classification paradigm. Due to the proposed adjustable periodic model retraining, our mechanism timely and effectively recognises novelties and resource-efficiently adapts to data streams. Our experimental evaluation and comparative assessment showcase the effectiveness and efficiency of the proposed mechanism over real data-streams in identifying novelty conditioned on the necessary model retraining epochs.
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