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A Framework for Data Mining Pattern Management

机译:数据挖掘模式管理框架

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摘要

To represent and manage data mining patterns, several aspects have to be taken into account: (ⅰ) patterns are heterogeneous in nature; (ⅱ) patterns can be extracted from raw data by using data mining tools (a-posteriori patterns) but also defined by the users and used for example to check how well they represent some input data source (a-priori patterns); (ⅲ) since source data change frequently, issues concerning pattern validity and synchronization are very important; (ⅳ) patterns have to be manipulated and queried according to specific languages. Several approaches have been proposed so far to deal with patterns, however all of them lack some of the previous characteristics. The aim of this paper is to present an overall framework to cope with all these features.
机译:为了表示和管理数据挖掘模式,必须考虑几个方面:(ⅰ)模式本质上是异构的; (ⅱ)模式可以使用数据挖掘工具从原始数据中提取(a-后验模式),但也可以由用户定义,例如用于检查它们代表某种输入数据源的程度(a-先验模式); (ⅲ)由于源数据经常更改,因此有关模式有效性和同步性的问题非常重要; (ⅳ)模式必须根据特定的语言进行操作和查询。到目前为止,已经提出了几种方法来处理模式,但是所有方法都缺少一些先前的特征。本文的目的是提出一个应对所有这些特征的总体框架。

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