Generalization and decision tree induction: efficient classification in data mining

M. Kamber, Lara Winstone, Wang Gon, Jiawei Han
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引用次数: 159

Abstract

Efficiency and scalability are fundamental issues concerning data mining in large databases. Although classification has been studied extensively, few of the known methods take serious consideration of efficient induction in large databases and the analysis of data at multiple abstraction levels. The paper addresses the efficiency and scalability issues by proposing a data classification method which integrates attribute oriented induction, relevance analysis, and the induction of decision trees. Such an integration leads to efficient, high quality, multiple level classification of large amounts of data, the relaxation of the requirement of perfect training sets, and the elegant handling of continuous and noisy data.
泛化与决策树归纳:数据挖掘中的高效分类
效率和可扩展性是大型数据库中数据挖掘的基本问题。尽管分类已经得到了广泛的研究,但很少有已知的方法认真考虑在大型数据库中进行有效的归纳和在多个抽象层次上对数据进行分析。本文提出了一种集面向属性归纳、关联分析和决策树归纳于一体的数据分类方法,解决了数据分类的效率和可扩展性问题。这样的整合使得对大量数据的高效、高质量、多层次分类,放松了对完美训练集的要求,以及对连续和有噪声数据的优雅处理。
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