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DEC: Dynamically Evolving Clustering and Its Application to Structure Identification of Evolving Fuzzy Models

机译:DEC:动态演化聚类及其在演化模糊模型结构识别中的应用

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摘要

Identification of models from input–output data essentially requires estimation of appropriate cluster centers. In this paper, a new online evolving clustering approach for streaming data is proposed. Unlike other approaches that consider either the data density or distance from existing cluster centers, this approach uses cluster weight and distance before generating new clusters. To capture the dynamics of the data stream, the cluster weight is defined in both data and time space in such a way that it decays exponentially with time. It also applies concepts from computational geometry to determine the neighborhood information while forming clusters. A distinction is made between core and noncore clusters to effectively identify the real outliers. The approach efficiently estimates cluster centers upon which evolving Takagi–Sugeno models are developed. The experimental results with developed models show that the proposed approach attains results at par or better than existing approaches and significantly reduces the computational overhead, which makes it suitable for real-time applications.
机译:从输入-输出数据中识别模型实质上需要估计适当的聚类中心。在本文中,提出了一种新的在线演进的流数据聚类方法。与其他考虑数据密度或与现有群集中心的距离的方法不同,此方法在生成新群集之前使用群集权重和距离。为了捕获数据流的动态性,在数据和时间空间中都定义了集群权重,以使其随时间呈指数衰减。它还应用了计算几何学的概念来确定聚类时的邻域信息。在核心和非核心群集之间进行区分以有效地识别真实的异常值。该方法有效地估计了聚类中心,并在此中心上发展了不断发展的Takagi-Sugeno模型。开发模型的实验结果表明,该方法取得的结果与现有方法相当或更好,并且显着减少了计算开销,使其适合于实时应用。

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