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Distributed Incremental Data Mining from Very Large Databases: A Rough Multiset Approach

机译:从超大型数据库进行分布式增量数据挖掘:一种粗糙的多集方法

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摘要

This paper presents a mechanism for developing distributed learners for learning production rules from massive, dynamic, and distributed databases. The task of distributed learning is formulated by the concept of multiset decision tables that is based on rough multisets and information multisystems, which are derived from the theory of rough sets. We use the concept of partition of boundary sets to represent and to combine distributed uncertain information. Learned rules are stored as multiset decision tables, which provide more compact representation, and they can be readily implemented using relational database technology.
机译:本文提出了一种开发分布式学习器的机制,用于从大量,动态和分布式数据库中学习生产规则。分布式学习的任务由基于粗糙集和信息多系统的多集决策表的概念来表述,而粗糙集和信息多系统是从粗糙集的理论派生而来的。我们使用边界集划分的概念来表示和组合分布的不确定信息。学习到的规则存储为多集决策表,它们提供了更紧凑的表示形式,并且可以使用关系数据库技术轻松实现。

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