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ESA-Stream: Efficient Self-Adaptive Online Data Stream Clustering

Yanni Li, Hui Li, Zhi Wang, Bing Liu, Jiangtao Cui, Hang Fei

2020IEEE Transactions on Knowledge and Data Engineering32 citationsDOI

Abstract

Many big data applications produce a massive amount of high-dimensional, real-time, and evolving streaming data. Clustering such data streams with both effectiveness and efficiency are critical for these applications. Although there are well-known data stream clustering algorithms that are based on the popular online-offline framework, these algorithms still face some major challenges. Several critical questions are still not answer satisfactorily: How to perform dimensionality reduction effectively and efficiently in the online dynamic environment? How to enable the clustering algorithm to achieve complete real-time online processing? How to make algorithm parameters learn in a self-supervised or self-adaptive manner to cope with high-speed evolving streams? In this paper, we focus on tackling these challenges by proposing a fully online data stream clustering algorithm (called ESA-Stream) that can learn parameters online dynamically in a self-adaptive manner, speedup dimensionality reduction, and cluster data streams effectively and efficiently in an online and dynamic environment. Experiments on a wide range of synthetic and real-world data streams show that ESA-Stream outperforms state-of-the-art baselines considerably in both effectiveness and efficiency.

Topics & Concepts

Computer scienceCluster analysisData stream miningData stream clusteringData streamData miningDimensionality reductionOnline algorithmStream processingBig dataMachine learningDistributed computingCURE data clustering algorithmCorrelation clusteringAlgorithmTelecommunicationsData Stream Mining TechniquesImage and Video Quality AssessmentAnomaly Detection Techniques and Applications
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