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Data mining and machine oriented modeling: A granular computing approach

机译:数据挖掘和面向机器的建模:一种粒度计算方法

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摘要

From the processing point of view, data mining is machine derivation of interesting properties (to human) from the stored data. Hence, the notion of machine oriented data modeling is explored: An attribute value, in a relational model, is a meaningful label (a property) of a set of entities (granule). A model using these granules themselves as attribute values (their bit patterns or lists of members) is called a machine oriented data model. The model provides a good database compaction and data mining environment. For moderate size databases, finding association rules, decision rules, and etc., can be reduced to easy computation of set theoretical operations of granules. In the second part, these notions are extended to real world objects, where the universe is granulated (clustered) into granules by binary relations. Data modeling and mining with such additional semantics are formulated and investigated. In such models, data mining is essentially a machine "calculus" of granules-granular computing. [References: 24]
机译:从处理的角度来看,数据挖掘是从存储的数据中机器(对人类)有趣的属性派生的。因此,探索了面向机器的数据建模的概念:在关系模型中,属性值是一组实体(颗粒)的有意义的标签(属性)。将这些颗粒本身用作属性值(其位模式或成员列表)的模型称为面向机器的数据模型。该模型提供了良好的数据库压缩和数据挖掘环境。对于中等大小的数据库,可以简化查找关联规则,决策规则等的过程,从而轻松地计算出颗粒的理论操作集。在第二部分中,这些概念扩展到了现实世界的对象,在该对象中,宇宙通过二元关系被颗粒化(成簇)成颗粒。具有这种附加语义的数据建模和挖掘得以制定和研究。在这种模型中,数据挖掘本质上是颗粒-颗粒计算的机器“演算”。 [参考:24]

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