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Conceptual Modeling for Classification Mining in Data Warehouses

机译:数据仓库分类挖掘的概念模型

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Classification is a data mining (DM) technique that generates classes allowing to predict and describe the behavior of a variable based on the characteristics of a dataset. Frequently, DM analysts need to classify large amounts of data using many attributes. Thus, data warehouses (DW) can play an important role in the DM process, because they can easily manage huge quantities of data. There are two approaches used to model mining techniques: the Common Warehouse Model (CWM) and the Predictive Model Markup Language (PMML), both focused on metadata interchanging and sharing, respectively. These standards do not take advantage of the underlying semantic rich multidimensional (MD) model which could save development time and cost. In this paper, we present a conceptual model for Classification and a UML profile that allows the design of Classification on MD models. Our goal is to facilitate the design of these mining models in a DW context by employing an expressive conceptual model that can be used on top of a MD model. Finally, using the designed profile, we implement a case study in a standard database system and show the results.
机译:分类是一种数据挖掘(DM)技术,其生成允许基于数据集的特征来预测和描述变量的行为的类。通常,DM分析师需要使用许多属性对大量数据进行分类。因此,数据仓库(DW)可以在DM过程中发挥重要作用,因为它们可以容易地管理大量数据。有两种用于模拟挖掘技术的方法:公共仓库模型(CWM)和预测模型标记语言(PMML)分别聚焦在元数据互换和共享。这些标准不会利用可以节省开发时间和成本的潜在语义丰富的多维(MD)模型。在本文中,我们提出了一个分类和UML配置文件的概念模型,允许在MD模型上设计分类。我们的目标是通过采用可以在MD模型的顶部使用的表达概念模型来促进DW语境中的这些挖掘模型的设计。最后,使用设计的简档,我们在标准数据库系统中实施案例研究并显示结果。

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