Real-time feature selection technique with concept drift detection using adaptive micro-clusters for data stream mining

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Data streams are unbounded, sequential data instances that are generated with high Velocity. Classifying sequential data instances is a very challenging problem in machine learning with applications in network intrusion detection, financial markets and applications requiring real-time sensor-networks-based situation assessment. Data stream classification is concerned with the automatic labelling of unseen instances from the stream in real-time. For this the classifier needs to adapt to concept drifts and can only have a single pass through the data if the stream is fast moving. This research paper presents work on a real-time pre-processing technique, in particular feature tracking. The feature tracking technique is designed to improve Data Stream Mining (DSM) classification algorithms by enabling and optimising real-time feature selection. The technique is based on tracking adaptive statistical summaries of the data and class label distributions, known as Micro-Clusters. Currently the technique is able to detect concept drifts and identify which features have been influential in the drift.

论文关键词:Data Stream Mining,Real-time feature selection,Concept drift detection

论文评审过程:Received 5 March 2018, Revised 6 August 2018, Accepted 8 August 2018, Available online 9 August 2018, Version of Record 31 October 2018.

论文官网地址:https://doi.org/10.1016/j.knosys.2018.08.007