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A Framework for Fast Classification Algorithms

机译:快速分类算法框架

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Today, due to globalization of the world the size of data set is increasing, it is necessary to discover the knowledge. The discovery of knowledge can be typically in the form of association rules, classification rules, clustering, discovery of frequent episodes and deviation detection. Fast and accurate classifiers for large databases are an important task in data mining. There is growing evidence that integrating classification and association rules mining, classification approaches based on heuristic, greedy search like decision tree induction. Emerging associative classification algorithms have shown good promises on producing accurate classifiers. In this paper we focus on performance of associative classification and present a parallel model for classifier building. For classifier building some parallel-distributed algorithms have been proposed for decision tree induction but so far no such work has been reported for associative classification.
机译:今天,由于世界的全球化,数据集的大小正在增加,因此有必要发现知识。知识的发现通常可以采用关联规则,分类规则,聚类,频繁事件发现和偏差检测的形式。快速和准确的大型数据库分类器是数据挖掘中的重要任务。越来越多的证据表明,将分类和关联规则挖掘,基于启发式,贪婪搜索的分类方法(如决策树归纳)集成在一起。新兴的关联分类算法已显示出产生准确分类器的良好前景。在本文中,我们关注于关联分类的性能,并提出了用于分类器构建的并行模型。对于分类器的构建,已经提出了一些并行分布的算法来进行决策树归纳,但是到目前为止,还没有关于关联分类的报道。

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