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Distributed Classification of Data Streams: An Adaptive Technique

机译:数据流的分布式分类:一种自适应技术

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Mining data streams is a critical task of actual Big Data applications. Usually, data stream mining algorithms work on resource-constrained environments, which call for novel requirements like availability of resources and adaptivity. Following this main trend, in this paper we propose a distributed data stream classification technique that has been tested on a real sensor network platform, namely, Sun SPOT. The proposed technique shows several points of research innovation, with are also confirmed by its effectiveness and efficiency assessed in our experimental campaign.
机译:挖掘数据流是实际大数据应用程序的关键任务。通常,数据流挖掘算法在资源受限的环境中工作,这需要诸如资源可用性和适应性之类的新要求。遵循这一主要趋势,在本文中,我们提出了一种分布式数据流分类技术,该技术已在真实的传感器网络平台Sun SPOT上进行了测试。所提出的技术显示了研究创新的几个要点,并且在我们的实验活动中评估了它的有效性和效率也得到了证实。

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