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A Parallel Architecture Model for Data-Driven Conceptual Clustering Methods

机译:数据驱动的概念聚类方法的并行架构模型

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摘要

For years now we have been devoting a lot of attention to the design of conceptual clustering algorithms able to process very large corpora of data, as requested by large scale data mining applications. Considering the development of parallel computers, we decided to transpose one of our algorithms, called MSG, on a MIMD parallel computer. The MSG is an instantiation of a universal representation paradigm for conceptual clustering methods. By mapping it to a parallel architecture, we hope to provide insights on how to use such architectures to push the limits of these methods further in terms of the volume of data that they can handle.
机译:多年来,多年来,我们一直专注于概念聚类算法的设计,这些概念聚类算法能够处理大规模数据挖掘应用程序所要求的大量数据集。考虑到并行计算机的发展,我们决定在MIMD并行计算机上转置一种称为MSG的算法。 MSG是用于概念聚类方法的通用表示范例的实例。通过将其映射到并行体系结构,我们希望提供有关如何使用此类体系结构以进一步限制这些方法可处理的数据量的见解。

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