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Methodology of Mean Shift Clustering Algorithm Implementation Based on Dataflow Computer

机译:基于数据流计算机的均值漂移聚类算法实现方法

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The article discusses the methodology development for implementing on a dataflow computer the Mean shift clustering algorithm, namely its subtype - Mean shift with flat core, also called FOREL (Formal Element). We have formalized the Mean shift algorithm for the dataflow implementation. We have also developed architecture of dataflow computer, identified the types of execution units, formulated algorithms of their operation and the information exchanging. The proposed computing methodology allows to reduce information traffic in the dataflow computing system for solving the clustering problem by combining a set of points located in the features space into a computational grid and reduce the time of clusters finding by parallelizing calculations. The methodology provides finding several clusters in the linear metric space, the number of which is unknown in advance due to the convergence of the Mean Shift algorithm.
机译:本文讨论了在数据流计算机上实现均值漂移聚类算法的方法学发展,即均值漂移聚类算法的子类型-具有扁平核的均值漂移,也称为FOREL(形式元素)。我们已经为数据流实现形式化了均值平移算法。我们还开发了数据流计算机的体系结构,确定了执行单元的类型,确定了它们的操作算法和信息交换。所提出的计算方法允许通过将位于特征空间中的一组点组合到计算网格中来减少用于解决聚类问题的数据流计算系统中的信息流量,并且通过并行化计算来减少聚类发现的时间。该方法提供了在线性度量空间中找到几个聚类的方法,由于均值漂移算法的收敛性,其数量事先未知。

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